PUBLIC USE MICRODATA SAMPLE OF THE 1850 UNITED STATES CENSUS OF POPULATION : User's Guide and Technical Documentation
by Steven Ruggles and Russell R. Menard
and Lisa Dillon Matthew Mulcahy
William C. Block Todd Gardner Ron Goeken J. David Hacker Diana Magnuson David Beck Ryden
Š 1995 Social History Research Laboratory Department of History University of Minnesota
We would appreciate a copy of any research papers using this sample . Correspondence should be directed to : Steven Ruggles University of Minnesota Department of History Social History Research Laboratory 614 Social Sciences Building 267 19th Avenue South Minneapolis, Minnesota 55455 ruggles@atlas .socsci .umn .edu
1850 Public Use Microdata Sample User's Guide and Technical Documentation
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TABLE OF CONTENTS
User's Guide Acknowledgments . . . . . . . . . . . . . . . . . .. . . . . Introduction . . . . . . . . . . . . . .
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The Integrated Public Use Microdata Series (IPUMS) . . . . . . . . . . . . .. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 6 Sampling Units . . . . . . . . . . . . . . . . . . Sample Design . . . . . . . . . .
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Data Entry and Quality Control . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .. . . . . . .
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Quality of Source Data . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .. . . . . . . . . . . . . . . . .. . . . . . . .
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Geographic Coding . . . . . . . . . . . . . . . . . . .. . . . . . . . . . . . . . . . . .. . . . .. . . . . Occupational Coding . . . . . . . . . . . . . . .. . . . Institutions
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References to User's Guide . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .
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The 1850 Census: Historical Overview and Instructions to Marshals Historical Overview . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . : : . . . . . . . . . . . . . Instructions to Marshals . . . . . . . . . . . . . . . . . . . . . .
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Circular to Marshals . . . . . . . . . . . .. . . .. . . . . .. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .
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Variable Descriptions Variables on Household Record . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .. . . Variables on Person Record . . .
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Index to Codebook Household Record Layout and Index . . . . . . . . . . . .
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Person Record Layout and Index . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . ,. . . . . . . . . . . . . . . . . . . . . . . . . 53
Codebook Household Record . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Person Record . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .
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Appendix Appendix : County Codes by State . . . . . . . . . .
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4 Guide
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Guide and Public Technical Use Microdata Documentation Sample
User's
1850
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USER'S GUIDE
ACKNOWLEDGMENTS
Principal funding for this project is National Science Foundation grant SES-9210903. The Graduate School and the College of Liberal Arts of the University of Minnesota provided additional funds. Data entry was carried out by Justine Denny, Susan Krajac, Dianne Star, and `Linda Thompson . Data editing and verification, the construction of data dictionaries, and most other tasks associated with the project were accomplished by Lisa Dillon and Matthew Mulcahy. Todd Gardner and Steven Ruggles developed the software for this project.
Diana Magnuson, William Block, J.
David Hacker, and Dave Ryden were primarily responsible for the codebook. The staffs of the Integrated Public Use. Microdata Series project, the 1880 Public Use Microdata Sample project, and the 1920 Public Use Microdata Sample-Bill Block, Todd Gardner, Ron Goeken, 3 . David Hacker, Patricia Kelly Hall, Sandra Jahn, Daniel Kallgren, Chad Ronnander, Dave Ryden, Beth Salerno, Matthew Sobek, and JoAnn Winkels-have''provided additional help' . Russell Menard and Steven Ruggles are the principal investigators. Miriam King's advice and assistance have been invaluable . We are grateful for the advice and cooperation of the creators of the previous historical public use microdata samples, especially Steven Graham and Halliman Winsborough
INTRODUCTION Individual-level public use files have proven to be an indispensable resource for social scientists, since they allow researchers to make tabulations tailored to their specific research questions.
Without individual-level data, some of the most basic questions about changing social
structure are unanswerable because of the: incompatibility of published data for different census years . In addition, public use microdata samples have allowed researchers to move beyond simple tabular analysis and apply increasingly sophisticated multivariate techniques . These data have dramatically increased the power of quantitative social science research . The Census Bureau has produced public use microdata samples as a byproduct of the .S . decennial enumeration in each census year since 1960 (U Bureau of the Census 1972, 1973, 1982, 1989) . In recognition of the value of census microdata files, historical public use microdata samples have been created for the censuses of 1880, 1900, 1910, 1940, and 1950 (Ruggles and Menard 1994 ; Graham 1980 ; U.S
Bureau of the Census 1984a, 1984b; Strong et al . 1989) .
Although most of
these files became available only recently ; they have already led to an outpouring'of new research on the nature of long-term social change . As each new sample is created, the value of the other census files is enhanced as they become increasingly useful for cohort 'analysis and studies of social change . The 1850 Public Use Microdata Sample extends theseries backward . A sample of the '1850 census will provide a baseline for understanding the processes that transformed American society
1850
Use Mierodata Sample User's Guide and Technical Documentation
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Public
over the past 150 years . In several crucial respects, it was the first "modern" census conducted by the United States and one of the first carried out by any nation in the world. The United States, of course, enumerated its population every ten years since its founding in 1790 . Before 1850, however, the unit of enumeration was the household and the census taker simply grouped residents by sex and race in broad age categories, making it impossible to investigate the characteristics of : individuals or to infer relationships among household members with any degree of confidence . The 1850 census continued to use dwellings and households as enumeration units, but within those units it listed the free inhabitants by name and reported the age, sex, color, place of birth, occupation, literacy, and other information for each individual (Anderson, 1988, 32-57; Wright and Hunt, 1900, 39-50) .' A complete list of census questions appears below, in the section "Circular to Marshals ."
Slaves were
listed individually by owner in a separate schedule . Their names were not recorded and the :schedule covered only age, sex, color and whether the slave was deaf and dumb, blind,' insane, or idiotic. Given the limited questions and the impossibility of inferring family relationships or marital status among slaves, we decided to ; confine the,,1850 Public Use Microdata Sample to free inhabitants'., although we hope to add the slave population at a later date . :Despite the high quality of the 1850 enumeration, the published tabulations from that census are of limited value .
Many of the most interesting variables collected were never tabulated . Among
the variables that were tabulated, there was little attempt at cross-classification other than by race, sex, broad age group, and locality .
These weaknesses of the published data for 1850 enhance the
value of the public use microdata sample .
THE INTEGRATED PUBLIC USE MICRODATA SERIES The 1850 sample is designed to be compatible with the Integrated Public Use Microdata Series (IPUMS). The IPUMS is a project funded by from the National Science Foundation (SES9118299)
to make the existing national census samples for 1880, 1900, 1910, 1920, 1940 ; 1950 ;
1960, 1970, 1980, and 1990 more useable and accessible . Because these samples were created at different times by different investigators, they have incompatible documentation and a wide variety of record layouts and coding schemes. series .
These differences among the samples inhibit their use as a time
We are now converting the existing public use microdata samples into a single coherent form.
This involves planning and design of record layouts, coding schemes, and constructed variables that maximize comparability and minimize information loss ; software development for reformatting,
recoding, constructing new variables; consistency checking, and allocating missing and inconsistent data ; data processing of approximately, 65 million records; and preparation of an integrated set of documentation for the entire series of datasets, including a general user's guide, a volume of procedural histories, and a volume on technical characteristics and error estimation .
A beta-test
version of the MUMS is now available, an intermediate version will be made available in June of 1995, and the final version will be complete by the summer of 1996 . directly compatible with the June 1995 version of the IPUMS .
The codes in this document are
For a more detailed discussion of the
creation of the IPUMS, the 1880, and 1850 Public Use Microdata Samples, see the special issue of
Historical Methods,
Winter, 1995 .
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User's Guide and Technical Documentation SAMPLING UNITS
All individuals in the 1850 census were assigned to a "family," a term that the census defined more broadly than it does today.
A family was an individual or group of individuals who
jointly occupied a dwelling` place or part of a dwelling place.
Census instructions defined dwelling
places as any occupied structure; they included both wigwams and tenement houses . The term family was defined as either (1) one person living separately in a house, or a part of
house, and
providing for him or herself; or (2) several' persons living together in a house, or in part of a house, upon one common means of support, and' separately from others' in similar circumstances . Thus, a widow living alone and separately providing for herself, or 200 individuals living together and provided for by hotel,
jail,
a common
head, were each considered to be one family . The resident inmates of a
garrison, hospital, asylum, or other similar institutions
were
also considered
one
family .
The analytic power of the public use microdata samples derives in large measure from their hierarchical organization : they are simultaneously samples of households (or families) and of This complex
individuals, and within households the relationships among individuals are known.
structure allows the creation of an almost limitless number of variables . Sampling units, however;' have varied among the samples. The public use microdata samples for the censuses of 1940 through 1980 are samples of households, those for 1900 and 1910 are samples of "families," and the public use microdata'sample for 1880 is a sample of dwellings. The 1850 Public Use Microdata Sample follows the precedent set by the 1880 sample : it is also a sample of dwellings. This sample strategy adds another level of hierarchy compared to a sample of families . There are several advantages to sampling at the level of dwellings .
First, there
are defmitional differences between the nineteenth century family and the household and group quarters of the post-1940 period .
Families were distinguished by a common means of support and
separate residence; although the exact definition of a household has varied, households and group quarters :generally have required either complete cooking facilities or a separate entrance .
It is likely,
therefore, that some households or group quarters under current census definitions were considered to be two or more families in the late nineteenth century. The nineteenth-century definition of dwelling, on the other hand, is clearly broader than the current definition of household or group quarters . potential
By providing information at for consistent comparisons :
the level of both dwellings and families, we maximize the
As well as maximizing comparability, sampling by dwellings provides additional information that would not otherwise be available.
The sample indicates that over 10 percent of the total
population resided in multi-family dwellings . The high frequency of such living arrangements makes them worthy of study in their own right. Multi-household dwellings can be identified by means of the
may
be useful to
incorporate some variables constructed from the characteristics of the dwelling as a
For
variable NUMHH. Even if analysis is carried out at the level of the family, it
in the same in nineteenth-century
whole .
example, analysis of surnames allows identification of kin who resided
dwelling but in
different families,
cities .
a
pattern that seems to have been common
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1850 Public Guide and
Use Microdata Sample Technical Documentation
The chief liability of sampling by dwellings instead of families is that it reduces the of independent observations in the file .
number
Since census microdata files are cluster samples (ordinarily
clustered by household), standard errors depend on both the number of clusters and on the homogeneity of variables within clusters . Calculation of standard: errors for samples of this type is quite complicated (U .S . Bureau of the Census 1972 ; Kish 1965) . In the worst case, with perfect homogeneity within clusters, the standard errors for variables would be inversely proportional to the square root of the number of clusters rather than the number of individuals.
Even for variables that
are not very homogeneous within clusters, such as age, there is some loss of precision when the total number of clusters is reduced. However, the increase of error, is : small. The, public use microdata samples for 1880, 1900, ;and 191,0 substituted the modern census term "household" for the, contemporary, term "family."
To avoid confusion; this documentation
follows that precedent .
SAMPLE DESIGN The manuscript census of the free population in 1850 consists of about 560,000 enumeration pages with 42 persons per page . These records are contained on 9'76 reels of microfilm. Each reel contains the census pages for several enumeration districts. Our sampling strategy involved randomly generating one sample point, on average, for every hundred persons in the census . To ensure that dwellings had equal probability of being included in the sample regardless- of their size, they were only entered if the randomly generated sample point fell on theline containing the first person in the dwelling . When the sample point fell on any other dwelling member, the dwelling was skipped . For example, if the sample point fell within a dwelling with 5 members, there was only a 1 in 5 chance that the dwelling was included in the sample,: but if it was taken, all five members were entered. Under this procedure each dwelling, family, and individual in the population had a l in 100 probability of inclusion. We modified this procedure for persons residing in institutions and large group quarters . The previous public use samples incorporated a variety of sampling strategies for handling such cases .
In general, members of large units were sampled on an individual basis, simply by treating
each member as if they lived on their own one-person household. This procedure increased the efficiency of the sample by raising the number of observations while maintaining representativeness . Unfortunately, the criteria for designating units to be sampled on an individual basis have varied, making the samples incompatible for some appl cations.
In the 1980 Public Use Microdata
Sample, all unitswith 9 or more members unrelated to the householder were classified as group quarters and members of group quarters were sampled on an individual basis (U .S . Bureau of the Census 1982).
For the public
use microdata samples of the period 1940-1970, the procedure was
similar, except that units with 5 or more secondary individuals or secondary family members were classified as group quarters and sampled individually (U .S . Bureau of the Census 1972, 1984x,
1850 Public Use Microdata Sample User's Guide and Technical Documentation 1984b) .
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In the 1910 sample up to 20 members of a family could be unrelated to the head before the
members were sampled at the individual level (Strong 1988).
The higher threshold for individual-
level sampling in 1910 allows detailed study of the small boarding houses that were characteristic of the period ; once again, however, there is a tradeoff between sampling error and the richness of the data .
In the case of the 1900 data file, all boarders, lodgers, and the institutionalized were sampled
as individuals or as secondary families, a strategy that maximizes precision at considerable cost in terms of lost information (Graham 1980). For example, the 1900 system makes it impossible to create a precise analog of the group quarters concept used in recent census years. To ensure defi nitional comparability of the 1850 sample with all existing public use microdata samples, the number of persons allowed before sampling the unit at the individual level had to be at least as large as in the 1910 sample. We followed the precedent established by the 1880 Public Use Microdata Sample and expanded the threshold to 31, which allows study of many boarding houses as intact units.
The following set of inclusion rules assured compatibility with the
sample designs of the previous public .. use microdata samples, while at the same time enriching the data . These rules result in equal probabilities of inclusion, regardless of dwelling size, family size, or the number of coresident relatives .
:1 .
If the dwelling contains 30 or fewer residents:
a)
accept the entire dwelling if the sample point falls on the first listed individual in the dwelling .
b)
2.
reject the entire dwelling if the sample point falls on any other dwelling resident .
If the dwelling contains 31 or more residents and the family contains 30 or fewer persons :
a) accept the entire family if the sample point falls on the family head ; also enter data on overall dwelling size and the number of families in the dwelling . b) reject the entire family if the sample point falls on any other family member .
3. If the dwelling contains 31 or more residents and the family contains 31 or more persons and the sample point falls within any group of related persons within the family (in 1960 census usage, within a primary or secondary family):
a)
accept the group of related persons if the sample point falls on the first listed individual within the related group; also enter data on overall dwelling size, family size, and the number of families in the dwelling .
b)
reject the entire related group if the sample point falls on any other member of the related group.
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4 . If the dwelling contains 31 or more residents and the family contains 31 or more persons and the sample point falls on an individual with no relatives in the family : a)
accept the individual ;
also enter data on overall dwelling size, family size, and the number
of families in the dwelling . These sampling rules may seem complex, but their implementation is straightforward . but a few percent of the cases fell under the first rule .
All
The second rule comes into play mostly in the
case of large tenement houses of the Eastern cities . The third and fourth rules apply for institutions, military barracks, hotels, dormitories, and the like . In some cases, we were unable to determine the breaks between dwellings because the marshal failed to provide dwelling numbers .
We then
sampled at the level of the family, using rules 2 through 4. Most of these cases were probably single-family dwellings; but their dwelling size was coded as missing .
The variable SAMPUNIT
indicates which sampling rule was employed for each case, distinguishing those cases in which sampling was carried out at the family level because of missing dwelling numbers .
DATA ENTRY AND QUALITY CONTROL Data Entry.
Data entry was carried out directly from the microfilm at personal computers.
The
computer program presented the data-entry operator with a facsimile of the census form . The operator read the page and line number of each sample point from a listing prepared for each reel of film, and moved the microfilm to the appropriate position . If the sample point was valid according to the rules set out in the previous section, the operator entered the case . We transcribed all the information on the census form verbatim, including name, street address, and all the other locational information that appeared at the top of the census form .
Some occupations and most birthplaces were
entered as abbreviations . The data-entry software performed a variety of interactive logical checks for internal consistency. For example, the only values that could be entered for the sex variable were M, F, % (missing), ! (illegible) and 0 (invalid entry) . Consistency Checking Program.
Beyond the edit checks carried out at the time of data entry, we
adopted several other procedures to ensure quality control and estimate error rates .
As soon as the
data entry for each microfilm reel was complete, research assistants ran a consistency checking program that carried out more sophisticated checks than the data-entry software . generated a file of problems requiring examination by research staff.
The program also
For example, the program
flagged impossible age and occupation combinations (e .g ., a five year old identified with an occupation), which often was resolved by checking the individual's age and then changing the occupation code by hand .
Or, to give another instance, since most families consisted of a single
race, the program flagged mixed-race families . Again, research staff made any appropriate changes. Research assistants re-examined every case with a failed edit check on the original microfilm unless the operator specifically noted that it was an enumeration error.
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The consistency checking program also produced a list of newly encountered valid data values for each field. These lists were distributed to the research assistant in charge of each data dictionary, who updated the dictionaries on a weekly basis. This means that each new value was classified numerically shortly after it was encountered.
For the complex classifications-such as
occupation and birthplace-each value was classified independently by two research assistants and any discrepancies were resolved in conference . Verification . To estimate transcription error rates we have carried out verification on 10 percent of the microfilm reels, randomly selected from all reels entered.
Verification was always carried out by
a different data-entry operator from the one who originally entered the data .
Once a reel was entered
twice, a research assistant ran a verification program to locate discrepancies between the original and the re-entered data file .
All such discrepancies were located on the original microfilm to determine
which file was correct.
Verification served two purposes . First, it helped us to identify data quality problems associated with particular variables and data-entry operators. Second, the verified reels allowed us to estimate transcription error rates for each variable in the sample as a whole. an extremely low overall transcription error rate (see Table 1) .
This process revealed
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Table 1. Transcription Error Rates from Verification
Field
Percentage of Error
city
1 .90
County
0.83
State
0.00
Line number
0.03
Dwelling number
1 .49
Dwelling size
0.65
Number of families
0.74
Family sequence number
0.00
Family size
1 .10
Institution
0 .68
Family number
1 .02
Race
0 .05
Sex
0.19
Age
1 .02
Married within year
0 .06
Occupation
0.55
School
0.38
Literacy
0.27
Disability
0.01
Birthplace
1 .30
Blind
0.00
Deaf
0.00
Idiotic
0.00
Insane
0.00
Pauper
0.00
Crime
0.01
Year
0.01
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QUALITY OF SOURCE DATA An important source of error in the 1850 Public Use Microdata Sample was underenumeration in the original manuscript census .
For the period before 1950, estimates of
underenumeration are problematic because of the weakness of vital statistics and the lack of post enumeration surveys.
Francis Walker and Carroll Wright, census directors in the late-nineteenth
century, both claimed that net underenumeration was under one percent around the turn of the century (U .S . Bureau of the Census, 1916 : 16), but such a figure cannot be believed . Coale and Zelnick (1963) and Coale and Rives (1973) have estimated net undercount for blacks and whites in the period 1880-1950 by the birth-reconstruction method .
They concluded that the 1880 census
undercounted blacks and whites by 6.5 percent. It is likely that underenumeration was more severe than this in 1850 . More recently, Social Science History published several articles using various methods (comparisons of federal census manuscripts with genealogies, commercially prepared maps, city directories, poll and tax records, and state census manuscripts) to estimate underenumeration in the 1850 to 1880 federal censuses for specific places .
Peter Knights (1991) was the only author to
address the 1850 census . He concludes that gross underenumeration in Boston was approximately 11 to 14 percent by comparing the census to other lists of Bostonians resident in the city at census time . Knights' figures should probably be interpreted as a maximum as it includes some people who were on the census but whom he failed to match up with city lists. More important, he demonstrates that underenumeration was a selective process: the foreign-born, unmarried young adults, those with lowstatus occupations, and residents in areas of rapid growth were most likely to be missed by the census takers . Historians have frequently expressed concern about underreporting in the census (e .g . Sharpless and Shortridge, 1975) . In comparison with alternative cross-sectional sources, however, the census is impressive . We can be reasonably confident that the response rate was about 90 percent or better in all census years for which we have public use microdata samples, a figure that compares favorably with the best of recent social surveys .
For-the nineteenth century, no alternative data
source even comes close to the census in terms of coverage .
DATA FORMAT Following conventional public use microdata sample practice, our preliminary file has a column-format hierarchical structure.
The file format is similar to that of previous public use
microdata samples. Variables common to a household as a whole are contained on a household record .
The household record is followed by a separate person record for each member of the
household, giving their individual characteristics. We have not created a separate record type for the dwelling ; data pertaining to the dwelling as a whole was repeated on each family record within multifamily dwellings. The layout of each record is given on pages 52-53 .
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With the exception of names and streets, numeric codes have been substituted for all alphabetic fields .
For users who want access to the alphabetic variables, an archive file is available
on request.
HOUSEHOLD COMPOSITION AND FAMILY INTERRELATIONSHIPS The study of household and family composition has proven one of the most fruitful applications of the public use microdata samples. Because the samples include information on entire households, they allow researchers to construct measures of family and household membership and family interrelationships tailored to their specific research questions.
This section
describes the tools provided in the 1850 sample for analysis of household composition and family interrelationships .
Definitions and Data Structure. As noted in the section on sample design, the 1850 sample is a sample of dwellings rather than a sample of households .
Dwellings were defined as "a separate
inhabited tenement, containing one or more families under one roof .
Where several tenements are
in one block, with walls, either of brick or wood to divide them, having separate entrances, they are to be numbered as separate houses ; but where not so divided, they are to be numbered as one house ."
Within dwellings, the Census Office identified families, a term that then encompassed the
modern census concepts of both household and group quarters .
"By the term family is meant,
either one person living separately in a house, or part of a house, and providing for him or herself, or several persons living together in a house, upon one common means of support, and separately from others in similar circumstances .
A widow living alone and separately providing for herself,
or 200 individuals living together and provided for by a common head, should be numbered together as one family ."
This definition is roughly comparable to the criteria used to distinguish
separate units-households or group quarters-in recent census years .
To avoid confusion, this documentation generally uses the term household to refer to the nineteenth-century census category "family. "
Following current Census Bureau practice,
institutions and other large units sampled at the individual level are termed group quarters, and families are considered to be related groups within households .
The unit actually sampled under the 1850 rules can be a dwelling containing one or more households, a household, a related group residing in group quarters, an individual in group quarters, or an unidentified fragment of a larger unit (see sampling rules) .
In each case, the unit
taken is identified by the variable SAMPUNIT . Like the other public use microdata samples, the 1850 Public Use Microdata Sample is organized hierarchically .
Each case consists of a household record pertaining to the unit as a
whole followed by a series of person records describing the characteristics of each individual in the household .
Multi-household dwellings appear as a series of consecutive households, and can
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be identified as members of a single dwelling because they share the same dwelling number (DWNUM) . The number of households in the dwelling is given by NUMHH.
Note that under
the 1850 sampling rules, multi-household dwellings with more than 30 residents were sampled at the household level rather than the dwelling level. Comparability of Sample Units in the Public Use Microdata Sa=le Files .
There have been some
changes in the definitions of basic units of enumeration since 1850, but the effects of these changes are probably modest .
More important are the differences among various public use microdata
samples in procedures for sampling group quarters . In all the :public use microdata samples,' large "units such as institutions and boarding houses are sampled at the individual level .
For example,
instead of sampling 1 in 100 prisons, public use microdata samples ordinarily sample 1 in 100 inmates of prisons .
Units sampled at the individual level are called group quarters .
The public use microdata samples of 1940 through 1970 had a very broad definition of group quarters : they included all units with five or more members unrelated to the head .
Thus,
for example, all members of a unit containing a primary family and five servants would be considered group quarters and sampled at the individual level.
The 1850' sample represents the
opposite extreme: up to 30 unrelated persons could coreside before the unit was considered group quarters and sampled at the individual level.
To compare the 1850 sample with recent census
years, use the GQ variable to identify households that would have been'classified as group quarters in the 1940 through 1970 Public Use Microdata Samples. Imputed Family Relationships . Explicit information on the relationship of each individual to the head of household was not gathered until 1880, but the 1850 census contains sufficient information' to impute most family relationships reliably . The 1850 census instructions to marshals specified that within each household, "the names are to be written beginning with the father and mother ; or, if either, or both, be dead, begin with some other ostensible head of the family ; to be followed, as far as practicable, with the name of the oldest child residing at home, then the next oldest, and so on to the youngest, then the other inmates; lodgers and boarders, laborers, domestics, and servants ."
In
addition to sequence in the household, the 1850 census provides other valuable clues to family relationship : surname, age, sex, occupation, and birthplace . The imputed relationship variable (IMPREL) is based on analysis of all these variables .
Two different strategies were used to impute relationship .
In the most clear-cut cases, we a
relied on a set of logical rules. Where there was any ambiguity, however, we turned to
probabilistic "hot deck" imputation procedure, similar to the procedures used by the Census Bureau to allocate missing and inconsistent information. Seventy-five percent of cases were assigned by the following logical rules .
The first
individual in each household was assigned as head . If the first person was male, the second was female, both were over age 20, both shared the same surname, and the woman was no more than 15 years younger or 20 years older than the head, she was assigned a relationship of wife . In 1880, when relationship was explicitly given, over 99 percent of such women were, in fact, wives of the head . Persons listed immediately after the head and wife were assigned as children of the head if
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they shared the same surname and were between 16 and 50 years younger than the head and between 15 and 45 years younger than the wife. Individuals following the first child were assigned as additional children if they met the same conditions and were listed in descending age order, with no more than 15 years separating adjacent children .
In 1880 over 99 percent of persons meeting these
conditions were actually listed as children of the head . All remaining cases--including younger potential wives and children out of age order-were assigned according to a hot deck procedure.
We identified nineteen key characteristics available in
the 1850 sample that were strong predictors of family relationship in the 1880 Public Use Microdata Sample : 1.
Surname;
2.
surname of preceding individual ;
3.
sequence in household;
4.
age;
.
5 . difference between age and head's or head's wife's age; 6.
difference between age and age of preceding individual ;
7 . presence and location of probable own spouse (defined as an adjacent opposite sex person over age' 16 with the same surname and an appropriate age interval) ; 8.
number of probable siblings (defined as same-surname persons within fifteen years of age who
9.
number of probable parents (defined as same-surname persons more than fifteen years older) ;
were not probable spouses) ;
10 .
number of probable children (defined as same-surname persons more than fifteen years
11 .
imputed relationship to head of immediately preceding person ;
12 .
occupation;
younger) ;
13 . head's occupation ; 14 .
migration status (defined as non-migrant in household with non-migrant head ; migrant in household with non-migrant head ; non-migrant in household with migrant head ; migrant in household with a head who migrated from the same' -place; or migrant in a household with a head who migrated from a different place) ;
15 . household type (distinguishing couple headed, single male headed and single female headed) ; 16 . urban residence ; 17 .
farm residence;
18 .
state of residence ;
19 .
region of residence. Once each case from 1850 was classified according to these nineteen characteristics, we
searched the 1880 Public Use Microdata Sample to find the most geographically proximate individual who shared all nineteen characteristics . That individual was designated as the "donor" and his or her relationship was assigned to the 1850 case . In some cases, no perfect donor could be found. We then searched the 1880 file for the best match. Each of the nineteen characteristics was weighted according to its power to predict family
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relationships correctly in 1880, as determined by regression analysis .
The case with the greatest sum
of weights was selected as the donor. Note that we did not include race as a predictor, as is customary in such allocation procedures .
In the context of the other nineteen variables, race was an insignificant predictor of
relationship to head .
Moreover, it is likely that the entire population of blacks in 1880 differed
significantly from the free black population of 1850, which might make race an unreliable predictor in our hot deck procedure. To test the imputation procedure, we applied it first to the 1880 Public Use Microdata Sample, imposing a rule that prevented individuals from donating a relationship to themselves or to any other member of their household. We then applied the procedure to the 1910 Public Use Microdata Sample, to see if thirty years of change in household composition between donors and recipients of imputed relationships would introduce unacceptable biases . Both tests yielded satisfactory results .
In 1880, the imputation procedure yields an exactly correct family relationship in
95 percent of cases and an approximate match (correctly classifying head, wife, child, and others) in 97 .5 percent of cases.
The procedure worked nearly as well when imputing relationships in 1910,
using donors from 1880:
94 .5 percent of relationships were exactly correct, and 97 .6 percent were
approximately correct. Just as important, the method is unbiased ; as shown in Table 2, it yields the correct distribution of family relationships in both census years . Table 2. Distribution of Imputed and Observed Family Relationships, 1880 and 1910 (Percents)
Relationship
1880 Observed
1880 Imputed
1910 Observed
1910 Imputed
Head
20 .7
20 .7
22 .7
Wife
16 .8
16 .8
Child
18 .0
50 .8
50 .9
45 .9
- 0.3
0.3
0.8
0.9
0 .9
Child-in-law
0.3
22 .7 18 .1 46 .1 -
0.4
Parent
0.8
Parent-in-law
0.5
0.6
0.7
0 .8
Sibling
1 .2
1 .2
1 .4
1 .3
Sibling-in-law
0.6
0.7
0.8
Grandchild
1 .3
1 .3
1 .3
0.8
Other relative
1 .2
1 .1
1 .3
1 .1
Non-relative
5.8
5.7
6.8
6 .9
1 .1
Given that the 1910 imputed relationships are just as unbiased and reliable as the 1880 ones, it is reasonable to expect that the imputed relationships for 1850 are also reliable and effectively unbiased .
Nevertheless, as with any imputed variable, users should exercise reasonable caution.
In
particular, users should be aware that any differentials in household structure between population subgroups (e .g ., by class, race, or ethnicity) are likely to be slightly understated because of random error in the imputation . For further . discussion, see the IPUMS technical supplement (forthcoming) .
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1850 Public Use Microdata Sample User's Guide and Technical Documentation
Family Interrelationships . The 1850 Public Use Microdata Sample is simultaneously a sample of households and of individuals . This hierarchical structure is one of the greatest strengths of the census file .
By combining the characteristics of several individuals within a household,
researchers can create a broad range of new variables about family and household composition and the characteristics of family members .
For example, we can analyze fertility by attaching children
to their mothers, and we can address the family economy by simultaneously measuring the age, sex, and occupation of all family members. One of our goals has been to develop a consistent, versatile, and reliable set of tools to make it easy for researchers to construct family variables using standard statistical packages . The 1850 sample includes a variable on the imputed relationship of each household member to the head of household.
This variable (IMPREL) provides the basic measure of family
relationships, but it is not sufficient to identify all family relationships and it is often inconvenient as a tool for constructing new family variables.
Consider the following household:
Table 3. Example of Fancily Relationships
Relationship
Surname
Age
Sex
Marital Status
MULCAHY
HEAD
61
F
MULCAHY
DAUGHTER
32
F
S
RYDEN
SON-IN-LAW
32
M
M
RYDEN
DAUGHTER
27
F
M
RYDEN
GNDCHILD
HACKER HACKER
-
W
4
M
S
BOARDER
26
M
M
BOARDER
22
F
M
The relationship variable is sufficient to establish that the two daughters are both children of the household head, but to identify the other family interrelationships we must look to their other characteristics .
We can infer that the son-in-law is married to the second daughter rather
than the first one because they share the same surname and are both listed as married; for analogous reasons, we know that the grandchild is probably the child of the second daughter listed .
It is also safe to assume that the two boarders are married to one another, because they are
both married, they share the same surname, they are both adults and close to the same age, and they are listed adjacently . To allow users to identify relationships among spouses, parents, and children without forcing them to use multiple variables and complicated logic, the 1850 census file includes a set of pointers called SPLOC, MOMLOC, and POPLOC . These pointers identify the location within the household of each individual's own spouse, mother, and father, respectively . these variables .
Table 4 illustrates
PERNUM is the sequence number of each individual within the' household .
SPLOC shows the sequence number of each individual's own spouse ; for example, since the sonin-law is married to the second daughter who is in the fourth position, his SPLOC is 04 .
Persons
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without a spouse are assigned a SPLOC of 00 .
MOMLOC and POPLOC show the sequence
numbers of own mothers and own fathers ; for example, the mother and father of the grandchild are in positions 04 and 03, respectively .
Table 4. Example of Family Relationships
Surname
Relationship
PERNUM
SPLOC
MOMLOC
POPLOC
MULCAHY
HEAD
01
00
00
00
MULCAHY
DAUGHTER
02
00
01
00
RYDEN
SON-IN-LAW
03
04
00
00
RYDEN
DAUGHTER
04
03
01
00
RYDEN
GNDCHILD
05
00
04
03
HACKER
BOARDER
06
07
00
HACKER
BOARDER
07
06
00
00 00
SPLOC, MOMLOC and POPLOC can be used to identify conjugal units, to attach characteristics of spouses or parents, to develop specialized own-child measures, or as building blocks for more elaborate measures of family composition.
In most cases, users will be able to
manipulate these variables to construct their own measures within a statistical package and will not be forced to resort to higher-level programming .
For example, users frequently need to attach the characteristics of immediate family members .
The following SPSS-X command file uses SPLOC to attach spouse's occupation to the
record of each married person .
SERIAL is a unique identifier for each household, constructed by
combining DWSEQ and HHSEQ.
First we obtain an active file with serial number (SERIAL),
occupation (OCC1950) and spouse location (SPLOC) .
SPLOC is renamed as PERNUM, and
OCC1950 is renamed as spouse's occupation (SPOCC) . PERNUM, and match it back to the original file .
We then sort the file by SERIAL and
Because the PERNUM we are matching was
originally SPLOC, we are actually matching spousal occupations . GET FILE =' PUMS 1850 . SY S' /KEEP SERIAL OCC 1950 SPLOC /RENAME (PERNUM=SPLOC)(SPOCC=OCCUP) SORT CASES BY SERIAL, PERNUM MATCH FILES TABLE=* /FILE ='IPUMS.SYS' /BY SERIAL,PERNUM SAVE OUTFILE='PUMS2 .SYS' FINISH It is virtually as easy to use MOMLOC and POPLOC to attach characteristics of own children .
The following SPSS-X command file uses similar logic together with the AGGREGATE
command to count the number of own children under ten years old for each woman.
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GET FILE ='PUMS1850 .SYS' /KEEP SERIAL MOMLOC AGE /RENAME (PERNUM=MOMLOC) SELECT IF (AGE LT 10 AND PERNUM GT 0) SORT CASES BY SERIAL, PERNUM AGGREGATE OUTFILE= * /BREAK SERIAL PERNUM /CHLT10 = N MATCH FILES TABLE=* /FILE='IPUMS .SYS' /BY SERIAL,PERNUM IF (MISSING(CHLT10)) CHLT10=0 SAVE OUTFILE='PUMS3 .SYS' FINISH Most family classification schemes are built immediate kin.
up
from information on the presence of
The basic Census Bureau classifications focuses
on
the presence of spouses and
children of the household head ; the Laslett (1972) scheme widely used by historians is based on a count of "conjugal family units" consisting of parents and children or married couples.
SPLOC,
MOMLOC, and POPLOC make it relatively simple to construct such classifications . Family historians are increasingly moving from household-level schemes of family classification toward individual-level measures of family structure .
For example, instead of
measuring the proportion of households headed by a single female parent, we might assess the proportion of women who were single parents or the proportion of children residing with mothers only .
Such individual-level analyses offer a variety of advantages that have been detailed
elsewhere (King and Preston 1990 ; Ruggles 1987, 1994a, 1994b) .
The individual-level pointer
variables are especially well suited to creation of these kinds of measures . In addition to SPLOC, MOMLOC and POPLOC, the 1850 sample provides a variety of other constructed variables to aid researchers in creating new family variables. These are described in Table 5 and illustrated in Table 6 .
NCHILD, ELDCH, and YNGCH are based on all
own children ; NCHLT5 is a count of own children under five, excluding identifiable stepchildren and adopted children (see discussion below) .
ELDCH and YNGCH receive a value of 99 if no
own children are present, and 98 if a child is present but age is missing or illegible .
Table 5. List of Variables on Family Interrelationships
PERSEQ REL NFAM
Sequence number of person within household Relationship of person to household head Number of household members related to person
NCHILD
Number of own children in household
NCHLT5
Number of own children under age five in household
ELDCH
Age of eldest own child in household
YNGCH
Age of youngest own child in household
SPLOC
Location of own spouse within household
MOMLOC
Location of own mother within household
POPLOC
Location of own father within household
-
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Table 6. Example of Family Relationships
Surname
Relationship
NFAM
NCHILD
NCHLT5
ELDCH
YNGCH
0
32
27
0
99
99
04
04
04
04
99
99
99
99
99
99
MULCAHY
HEAD
05
2
MULCAHY
DAUGHTER
05
0
RYDEN
SON-IN-LAW
05
1
RYDEN
DAUGHTER
05
1
RYDEN
GNDCHILD
05
0
0
HACKER
BOARDER
02
0
0
HACKER
BOARDER
02
0
0
Procedures for Linking Parents and Children . is usually straightforward .
1 1
Assigning links between parents and their children
In about 97 percent of cases, the imputed variable on family
relationships (IMPREL) is sufficient to establish parent-child links .
For example, if an individual
-is listed as a child of the household head, his or her parents should always be listed as the household head or wife of head, and there is little ambiguity because each household has one head and no more than one wife .
Similarly, the parents of persons listed as the household head or a
sibling of the head are always listed as mother or father of the head, and each household contains no more than one person listed as mother and no more than one listed as father . Parentage is almost as clear-cut for persons listed as wife or sibling-in-law, since households ordinarily do not include multiple mothers-in-law or fathers-in-law .
For persons who have family relationships other than head, wife, child, sibling, or siblingin-law, the relationship information does not identify parental relationships with as much precision. For example, we know that the parent of a person listed as grandchild of the head should be listed as a child or a child-in-law, but because a family may contain multiple persons listed as child or child-in-law, the relationships do not unambiguously identify parentage .
Even if there is only one
child present, there is still room for error, since a grandchild could be the offspring of an absent child .
In some cases-such as secondary families consisting of boarders-the relationship codes
may provide no information for linking parents and children . Whenever the family relationship codes are unclear, we must turn to other information to identify parent-child relationships .
The 1850 census contains four additional pieces of information
that can be used to clarify ambiguities : age, marital status, surname and the order in which individuals are listed in the census .
Thus, for example, if a household contains a daughter
followed immediately by a grandchild who is twenty years younger than the daughter, we may reasonably infer a maternal relationship even if other daughters are present. We attempted to make a system of rules that would be compatible with public use microdata samples from other census years .
We therefore begin by establishing all parental
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relationships that can plausibly be identified using only information available in all census years : relationship, age, sex, marital status, and sequence in the household listing. This is carried out by means of three logical rules, described below.
For 1850, we then use an additional rule to add
parental relationships that can only be identified by using information on surname similarity . Additionally, Rule 7 identifies those cases where a child was linked as a step child. be established through more than one rule, the lower-numbered rule was used .
If a link could
The rule used in
any particular case is identified in the variables MOMRULE and POPRULE.
Rule 1 .
Unambiguous relationships a) If the relationship of an individual to the household head is son, daughter, or child, then establish parental links to persons with an imputed relationship of head or wife, or b) if the relationship of an individual to the household head is head, brother, or sister, then establish parental links to persons with an imputed relationship of mother or father, or c) if the relationship of an individual to the household head is wife, brother-in-law, or sister-in-law, then establish parental links to persons with an imputed relationship of mother-in-law or father-in-law.
Rule 2. Grandchildren If the relationship of individual to household head is imputed as grandson, granddaughter, or grandchild, then establish parental link to the most proximate child and/or child-inlaw with the same surname and a plausible age difference .
Plausible age differences
are- defined as 12-54 years for women, and 15-74 years for men.
If there is more than
one eligible parent, choose the most proximate. Rule 3 . All other relatives and non-relatives (using household position) Link relatives and non-relatives not mentioned above to any preceding person with the appropriate relationship and a plausible age difference as defined in rule 2, as long as there are no intervening persons other than children or spouses of the potential parent . Links between relatives and non-relatives are prohibited .
Rule 4. All other relatives and non-relatives (using surname) Same as rule 3, except that surname similarity is substituted for the requirement that there are no intervening persons between the parent and child .
If more than one eligible
parent is found, the most proximate is linked .
Rule 7. Spouse of linked parent If one parent is linked and they have a spouse present, their spouse is linked as a stepparent .
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We performed two basic checks for inconsistency of the family links. were linked but they were not married to each other, we unlinked the father .
First, if two parents Second, if both
partners in a married couple were linked to the same parent we chose the best parental link based on detailed relationship code, surname, and proximity within the household . Users should be aware that the logical rules used to create MOMLOC and POPLOC link parents to adopted children and stepchildren as well as to biological children .
This may be
appropriate for the study of topics such as the family economy, but for some topics-such as fertility analysis-adopted children and stepchildren should be eliminated whenever possible . Many stepchildren and adopted children can never be identified, but users who want to eliminate non-biological maternal links should eliminate cases in which the age difference between mothers and children fall outside the range 15 to 49 .
The variable CHLT5 excludes identifiable
stepchildren and adopted children, since it is mainly intended for fertility analysis . Procedures for Linking_Spouses .
Spousal links are much easier than parental links.
Most
households have only one married couple, and where more than one married couple is present proximity is a reliable indicator of who goes with whom . In all census years where marriages are explicit, married couples are listed adjacently in about 99 percent of cases, and the few exceptions can almost all be resolved through relationship codes .
Potential spouses must be at least 16 years
old and no more than 17 years older than their husbands ; husbands must be at least 18 years old and no more than 28 years older than their wives .
First, each eligible male is examined and linked
to any eligible adjacent subsequent female ; then, each eligible female is examined and linked to any eligible adjacent subsequent male .
If there remain any non-adjacent couples after these first
two passes they are linked provided that the wife is no more than five years older than the husband and the husband is no more than fifteen years older than the wife .
If there is more than one
potential non-adjacent spouse, the most proximate is chosen . Accuracy of the Linking Procedures .
To test the reliability of the parental and spousal links based
on imputed family relationships, we tested them against links based on explicit relationships in 1880 and 1910 .
In 1880, the MOMLOC based on imputed relationships was identical to
MOMLOC based on observed relationships in 97 .1 percent of cases; the comparable figures for POPLOC and SPLOC are 97 .5. percent and 98 .8 percent, respectively .
In 1910, the imputed links
were identical to the links. based on observed relationships in 97 .4 percent of cases for MOMLOC, 97 .5 percent for POPLOC, and 98 .9 percent for SPLOC . accuracy is greater, approaching 99 percent . most applications .
For parental links to young children,
Therefore the links may be considered reliable for
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GEOGRAPHIC CODING
State and County Residence.
The 1850 Census provided three basic pieces of geographic
information; state of residence, county of residence, and civil division . We ran data quality checks on the state and county information.
Because each microfilm reel contained individuals from a single
state, mistakes were easily corrected for state of residence. For the county data check, we used a list of counties which included specific reel numbers to verify the correlation between the county name and reel number . In cases where there was an inconsistency between reel number and county of residence, we consulted the microfilmed manuscript and corrected what usually was a data-entry error. In those rare instances where the county line was left blank by the marshal, we used additional information, usually the county entry for the previous and following page, to enter the correct county .
Both states and counties were entered as they appeared on the schedules and later recoded to
conform to the ICPSR state and county codes. Population of Incorporated Places .
The 1850 Public Use Microdata Sample includes variables which
identify the top 98 cities by name and all incorporated municipalities by population size . All incorporated municipalities were assigned their respective population figures, in hundreds, in the city population variable (CITYPOP). All unincorporated places were coded as zero . In addition, the city variable (CITY) indicates residence in one of the largest 98 cities in 1850 .
Users should note that the
Philadelphia population figure does not include the populations of Kensington, Moyamensing, Northern Liberties, Southwark, and Spring Garden, which were not annexed to Philadelphia until 1854 . Each of these cities is large enough to be ranked individually in the top twenty-five urban areas, and we have kept their populations separate . Users should also note Philadelphia is coded to reflect its population as an aggregate of these lesser divisions although they each maintain their distinct population totals . The 1850 census returns were not especially clear in distinguishing incorporated municipalities .
Indeed, according to the director of the Census Office in 1870, the 1850 returns were
"exceedingly defective and inaccurate" (U .S . Census Office, 1872, p. xlvi .) . Most states had incomplete returns for certain counties or Census marshals did not differentiate between various subdivisions within counties .
We therefore used the 1870 published materials, as well as the 1850
returns, to more accurately designate incorporated places . For example, in Knox County, Illinois, there were several subdivisions noted, but none were listed as an incorporated place. The 1870 returns, however, indicated that Knoxville was incorporated in 1850 . These cases were assigned population totals as incorporated places based on their 1850 population totals . In cases where an incorporated village or small town shared the same name as the township where it was located (Sycamore Town in Sycamore Township in De Kalb County, Illinois, for example) it was impossible to distinguish one from the other at the recoding stage unless the marshal supplied the designator "township" or "village of."
We dealt with this difficulty by going back to the
manuscript schedules to see if it was possible to distinguish between the village and the township .
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New England states and Southern states presented specific problems in designating incorporated places . Few places in New England were incorporated in 1850 . In these states, the town was typically the smallest form of government organization. equivalent to "township" in most other parts of the country) . all residents of New England states . dealing with Southern cities .
("Town" in New England was the
As a result, town population is used for
The poor quality of census returns was particularly troubling in
The 1850 published materials note that "the returns for Southern States,
except Arkansas, do not show any complete system of subdivision of counties" (U .S . Census Office, 1853, p. 1015) .
Southern cities were listed instead in a separate table, but the tables noted only those
cities and towns that Census officials could "ascertain from the schedules," and hence are not a complete listing of all incorporated places . Augusta, Georgia, for example, was enumerated with a population of 11,753 in a local census in 1852, but officials in 1850 could not determine the boundaries of the municipality in the national census, and the city was not assigned a population total in the published returns.
Assigning total city populations in the South was also complicated by slavery.
Slaves were
enumerated in a separate schedule in 1850, but the slave population was included in the published returns and we have included the figures in assigning population totals for Southern cities .
Two
problems with the slave population, however, should be noted . First, in some cases, slaves were not recorded at all. Yorkville, South Carolina, for example, has no slave population; the figures therefore reflect the white and free black populations.
Second, slave population figures were
sometimes listed in the published returns, but they were not included in the aggregate population totals for the municipality in question. The returns for Charlottesville, Virginia, for instance, list 840 slaves in the city, but this number was not added to the white and free black population totals . According to the published returns, because towns were not separated on the slave schedules, "the numbers in the slave columns . . . were collected from the returns with great labor, and include often, unavoidably, slaves owned, but not living, in the town .
The aggregates, being uncertain, are
omitted" (U .S . Census Office, 1853, p. 258) . We have not omitted the figures. For cities where any slave populations were listed, we added them to the total population of the city . In general, anyone using data concerning southern cities should consult the published materials to differentiate the accuracy of the numbers in question . Place of Birth . Marshals were instructed to obtain information on the country of birth for each individual . These data can be used to study migration by individuals . In almost every case the birthplace of the individual was recorded by the marshals . Birthplaces are coded according to the IPUMS system to ensure compatibility across all census years . Enumeration instructions for 1850 were very general, requiring only country, or U .S . state or territory of origin .
While interpretation of the place of birth variable is generally straightforward,
two complications should be mentioned.
Users should be aware that some persons born in the
Southwest, which later became part of the United States, often listed their place of birth as Mexico . In addition, the code "Indian Territory" refers specifically to the eastern half of Oklahoma .
Other
Native American birthplaces were enumerated either as a specific tribe, the Choctaw Nation for example, or as Native American.
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OCCUPATIONAL CODING
The 1850 census was the first to ask respondents their occupation . Unlike later censuses, it offered few instructions to enumerators regarding occupations. Marshals were simply instructed to note the occupation of each white and free black male over fifteen years of age, recording "the specific profession, occupation or trade which the said person is known and reputed to follow in the place where he resides ."
Clergymen were to be distinguished by denomination .
Individuals
performing more than one job were to be identified only by their primary occupation .
occupations were not reported.
Women's
The limited instructions provided by the Census Office produced inconsistent and often vague responses. Marshals sometimes listed an industry without an occupation (e .g ., "Cotton mill"), or an occupation without an industry (e .g ., "Molder"). ("dead of cholera"),
In addition, other information such as health
place of residence ("lives in a cave") or relationship status ("widow of Israel B
Sheldon") was sometimes entered in the occupation field. Occupations were most frequently difficult to identify when they had been misspelled or partially spelled ("filen" ; "mider") . Because of these irregularities, classifying and coding occupations proved challenging .
Our method of coding occupations consisted of three main stages :
data entry, sorting, and
coding . In the data-entry stage, operators recorded most occupations exactly as they were reported by the census marshals, including spelling errors or abbreviations. Some common occupations, such as servants, were abbreviated.
These titles were then copied into a separate file and sorted
alphabetically . Finally, each title was assigned a numeric code according to the 1880 and 1950 Census classification systems.
880 Occupational Classification : the 1850 census .
The Census Office did not prepare a true classification scheme for
Instead, it provided an alphabetical list of the number of men performing 324
occupations, arranging the occupations roughly by industry . Since the 1850 census lacked a practical classification of its own, we coded occupations according to the 1880 census classification .
In
addition, each response was assigned a code in the 1950 census occupational classification . In many cases, coding an occupation according to the standards employed by the 1880 Census Office in tabulating returns was difficult. No detailed instructions remain and many of the enumerated responses are vague or incomplete . consistent coding .
Consequently, we devised a number of procedures to ensure
These procedures were intended to replicate those used in classifying occupations
in the 1880 Public Use Microdata Sample .
Four general rules covered many of the difficult coding
problems . Rule 1 .
In cases where more than one occupation was listed we coded according to the first
occupation . However, when the first occupation was a non-occupational response (e .g ., "keeping house") and the second gave an actual occupation, we coded according to the second occupation . Rule 2.
When the response listed both an occupation and an industry, we gave preference to the
industry over the occupation if that industry was explicitly noted in the- 1880, classification . The
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rationale for this procedure is the "industrial" classification system used by the 1880 Census Office which placed greater importance on locating persons within sectors of the economy than in relating their specific tasks . Thus, for example, the response "Blacksmith on railroad" was coded as "Employee on railroad" rather than as "Blacksmith."
Rule 3 .
If the occupation response gave only a place of employment or an industry within the
manufacturing sector (e .g ., "Iron mill"), then we coded the occupation at the employee level.
If
the response contained only a type of store (e .g ., "Dry goods store" or "Grocery"), we coded the man as a trader and dealer in that line of trade.
If the response referred to a "Shop," it was coded
among the manufacturing occupations ; if it referred to a "Store," it was coded within trade and transportation .
Rule 4 .
In our previous work classifying occupations for the 1880 Public Use Microdata Sample,
comparisons with the published 1880 returns sometimes revealed large discrepancies .
These
differences suggested that certain responses be reclassified to approximate as closely as possible the 1880 Census Office procedures . We used this information to classify 1850 occupations as well .
This procedure was particularly helpful in dealing with agricultural laborers and clerks .
_ 1880 Occupation Modifications.
001 Agricultural Laborers .
The nineteenth-century Census Office regularly complained
about the confusion of agricultural and common laborers, specifically, the undercount of farm laborers . We suspect that the Census Office often inferred agricultural laborer status from the characteristics of the household or locality .
Occupational classification in the Public Use Microdata
Sample was carried out using the occupation field in isolation from other characteristics . After initial classification, we recoded men in "Laborers (not specified)" into "Agricultural Laborers" when they resided in a household headed by a farmer .
023, 065 Clerks . Comparisons of 1880 Public Use Microdata Sample data with the published 1880 tabulations revealed that the Census-Office regularly interpreted the--response "Clerk" to mean "Clerks in stores," rather than "Clerks and copyists (not otherwise described) ." clerks accordingly in 1850 .
We coded
The residual category "Clerks and copyists (not otherwise described)"
now contains men returned as clerks who worked in a specified setting not described in other clerk categories .
Residual Categories . We coded more men within the "other" groupings than did the 1880 tabulators . We had no guidance as to whom the 1880 Census Office put in these categories . Some of the distinct groups and general rules of classification we followed are :
.
089- Porters and Laborers in Stores and Warehouses . Includes the numerically significant group of stevedores and longshoremen. Anyone reported as "Works in [some type of store]" was also classified here .
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172- Employees in Manufacturing Establishments (not specified) . Men reporting a manufacturing occupation that suggested employee status but did not include reference to a mill or factory (e .g ., "Works in lamp shop," and "Pressman") .
204- Mill and Factory Operatives (not specified) . Men whose title suggested employee or operative status while also mentioning a mill or factory workplace.
Some of the titles include
"Mill hand," "In pencil factory," and "Steam mill ." 210- Officials of Manufacturing and Mining Companies. Includes the following terms in the title in combination with some reference to manufacturing : keeps, owner, proprietor, manager, running, superintendent, president, treasurer.
265- Others in Manufacturing, Mechanical, and Mining Industries . Titles that suggest manufacturing occupations but that give no intimation of the man's status (employee, owner, etc.) .
Included here are many men described simply as "makers" of certain items not specified
among the other occupational categories . 266- Employed, Occupation Unspecified. A category we added for the Public Use Microdata Sample .
Men coded here gave a response that clearly indicated they were employed, but there
was no way to determine even in which economic sector to place them .
Such men are gainfully
employed . We differentiated among the non-occupational responses we encountered in the data and coded them into a number of categories above the numeric range of legitimate occupational responses (301-310). Users interested only in gainfully employed men should exclude these responses . Many of the non-occupational responses describe the condition of adolescents and the elderly. We grouped the responses to maximize their usefulness to researchers .
1950 Occupational Classification .
.
We coded occupations into the 1950 Census Bureau occupational
classification in addition to the 1880 scheme .
The 1950 classification was carried out in - a similar
manner to the 1880 coding (steps 1 and 3 detailed above) . In coding into the 195(3 system we did not favor industry as we did for 1880 . The procedure for 1950 coding also differed because we did not have published Census Office statistics against which to compare our figures.
Classification was
simplified greatly by a published 1950 Index of Occupations and Industries which the Bureau used for its own tabulations . The vast majority of 1880 occupations were contained in this index, which supplied the appropriate 1950 code for particular job titles, sometimes providing different codes for the same occupational title where the industry differed .
The status of certain occupations may have
changed since 1880 with respect to the particular occupational grouping in which it belongs-(e .g ., "Craftsmen" or "Operative"), but we adhered strictly to the letter and logic of the 1950 Index . leave it to the individual researcher to resolve such issues . Some occupations proved difficult to code because of ambiguity, lack of the necessary industry information, or because the particular occupation disappeared-or the title fell out of usage-between 1850 and 1950 . If no appropriate category suggested itself, we classified the
We
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occupation within one of the residual categories such as "Operatives and kindred workers (not elsewhere classified) ."
The following occupations proved problematic or contain subgroups that bear
pointing out:
300- Agents (not elsewhere classified). If the title suggested a man was an agent in retail, as opposed to wholesale or manufacturing, then he was coded in "Salesmen and sales clerks (not elsewhere classified)."
564-Painters, Construction, and Maintenance.
There are two categories of painters in 1950,
the other being "Painters, except construction or maintenance" (670) . We used the construction category as the default code . Men listed as "Painter" or "House painter" were coded in construction painting .
594- Craftsmen and Kindred Workers (not elsewhere classified).
This includes men returned
as coopers, brewers, and wagonwrights, among others . 625- Bus Drivers . Includes bus, coach and stage drivers.
A man returned as a "Coachman"
was coded in "Private household workers (not elsewhere classified)" (720). 682- Taxicab drivers and chauffeurs .
Includes carriage and hack drivers.
683- Truck and Tractor Drivers . Includes cartmen, expressmen, and men listed only as "driver."
We also classified "teamsters" here, rather than coding them in the 1950 category,
"Teamsters ." index .
This was the only point where we consciously broke from the 1950 occupational
Our rationale was that teamsters in 1950 were an insignificant and marginal occupation
classified in the larger grouping "Laborers, Except Farm and Mine ."
Teamsters in 1880 were a
mainstream occupation performing the function of 1950 truck drivers. With other occupations we did not let the mechanization or change of method or setting change their classification . 690- Operatives and Kindred Workers (not elsewhere classified) .
A large residual category
containing harnessmakers, tanners, wagon makers, cigar makers, and men reported as "working" in a mill or ship .
970- Laborers (not elsewhere classified) .
Subject to the same logical recoding as the 1880
laborer category whereby men in households headed by a farmer were recoded as "Farm laborers, wage workers."
The laborer category contains men identified as "Hostler .
975- Employed, Occupation Unspecified-A category we added for the Public Use Microdata Sample .
Men coded here gave a response that clearly indicated they were employed, but there
was no way to determine even in which economic sector to place them. Such men were gainfully employed .
Non-occupational responses were grouped into categories and given codes above the range of legitimate 1950 occupational responses (981-990) .
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INSTITUTIONS In 1850, census marshals were instructed to supply the names of all public institutions (see marshal instructions below) . In addition to the classification of institution type, we created a classification of institution funding to distinguish, where possible, among public, private, federal, state, and local sources of financial support .
Both variables were coded to be compatible with the
MUMS variables Group Quarters Type and Group Quarters Funding.
Often the type of institution was evident from the name, as in "Cleveland City Hospital" or "St. Vincent's Orphan Asylum ."
In other cases, however, it was necessary to examine the
characteristics of individuals in the facilities or those who were in charge . Identifying the source of funding was more problematic . The name of the institution was crucial in assigning a value. If the marshal did not supply an institutional name, the sample point went unspecified unless it was a correctional institution or workhouse (coded government unspecified), a military unit (federal government), or religious institution. Facilities with names which clearly identified them as public were given the appropriate government code . However, an institution with the name of a state or locale but no government qualifier was not placed in a publicly funded category .
A code of " 1 " was
assigned to facilities with religious names, such as "House of the Good Shepherd or St . Mary's Hospital," unless there were overriding considerations .
For example, "St. Louis City Hospital" was
assigned a public code because precedence was given to the government qualifier.
Reliance on the
name of the institution to determine type of funding does present ambiguities . Many institutions have been assigned an indeterminate funding code because their sources of funding were unclear. The coding system simply offers users an initial ordering of institutions . The institutions were divided into seven broad categories as follows:
100-199 Penal Institutions 200-299 Insane Asylums and Mental Institutions 300-399 Homes for the Dependent 500-599 Military Institutions 600-699 Schools 700-799 Group Quarters 800-899 Other Codes for the funding variable GQFUND are as follows: 11 . Federal-level Public Funding 13 . State-level Public Funding 16 . City/County-level Public Funding 17 . Public Funding, unspecified 21 . Private Enterprise 24 . Religious 99 . Not Classifiable
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REFERENCES TO USER'S GUIDE Anderson, Margo J. (1988) The American Census: A Social History .
New Haven: Yale University
Press. Coale, Ansley J . and Melvin Zelnik (1963) New Estimates of Fertility and Population in the United
States .
Princeton, NJ :
Princeton University Press .
Coale, Ansley J. and N . W. Rives (1973) "A statistical reconstruction of the black population of the United States 1880-1970: Estimates of true numbers by age and sex, birth rates, and total fertility ."
Population Index 39 :3-36. Easterlin, Richard A., George Alter, and Gretchen Condran (1978) "Farm and farm families in old and new areas :
The northern states` in 1860 ." In Family and Population in Nineteenth Century
America, ed . Tamara Hareven and Maris Vinovskis. Princeton: Princeton University Press: 22-84. 1900 Public Use Sample: User's Handbook.
Graham, Stephen N. (1980)
Seattle : Center for
Demography and Ecology, University of Washington . Ruggles, Steven and Russell R. Menard (1990) "A Public Use Sample of the 1880 Census of Population ." Historical Methods 23 : 104-115 . Ruggles and Menard, et al. (1993)
1880 Public Use Sample User's Guide .
Minneapolis: Social
History Research Laboratory, University of Minnesota.
Strong, Michael A., Samuel H . Preston,
Ann R. Miller, Mark Hereward, Harold R. Lentzner,
Jeffrey R. Seaman, Henry C. Williams (1989)
Population .
User's Guide : Public Use Sample, 1910 Census of
Philadelphia : Population Studies Center, University of Pennsylvania .
U .S . Bureau of the Census (1916) Special Reports of the 12th Census .
Supplementary Analysis and
Derivative Tables . Washington, D .C . : U .S . Government Printing Office . (1972) Public Use Samples of Basic Records From the 1970 Census : Description and Technical Documentation . Washington, D.C . : U.S . Government Printing Office . (1973) Technical Documentation for the 1960 Public Use Sample . Washington, D . C . : U. S. Government Printing Office .
.
(1982) Public Use Samples of Basic Records From the 1980 Census : Description and Technical Documentation .
Washington, D.C . :
U.S . Government Printing Office .
User's Guide
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Page 32
(1854)
Census of Population, 1850. The Statistics of the Population of the United States .
Washington, D .C . : U.S . Government Printing Office . Statistical View of the United States: Compendium . Washington, D.C . :
(1854)
U .S .
Government Printing Office .
(1872)
Census
Washington, D . C . :
(1984a)
of Population,
1870: The Statistics of the Population of the United States .
U .S . Government Printing Office .
Census of Population, 1940: Public Use Sample Technical Documentation .
Washington, D.C . :
U .S . Government Printing Office .
(1984b) Census of Population, 1950 : Public Use Sample Technical Documentation . Washington, D.C . :
---- (1989)
U.S . Government Printing Office .
Census of Population and Housing.
Washington, D. C. :
Tabulation and Publication Program.
U.S . Government Printing Office .
Wright, C.D ., and William C. Hunt (1900)
The History and Growth of the United States Census .
Washington, D.C . : U.S . Government Printing Office .
1850 Public Use Microdata Sample User's Guide and Technical Documentation
The 1850 Census Enumeration Page 33
THE 1850 CENSUS : HISTORICAL OVERVIEW AND ENUMERATOR INSTRUCTIONS
HISTORICAL OVERVIEW The Population Schedule . Throughout the history of the United States census, the population schedule has been marked by seasons of reform (i .e ., 1850, 1880, 1940, and 1960) followed by periods of quiescence or retreat. Particularly significant was the change between 1840 and 1850, marking the end of one era of census-taking and the beginning of another persisting to today . From 1790 through 1840, the household was the enumeration unit .
Questions asked how
many people with a given set of characteristics (e .g ., white, male, and over 16) were found in a household. The enumerator supplied the appropriate tallies in separate columns devoted to each specified set of characteristics.
Thus, if the population were simultaneously broken down into two
sexes, two races, and three age periods, twelve columns would be needed to record all the requisite information.
As census users demanded coverage of more subjects and more detailed classifications,
this household-based schedule format became increasingly awkward.
With eighty total columns, the
1840 population schedule demonstrated the practical limits to this enumeration style . The unwieldy nature of the 1840 population schedule led to numerous inaccuracies in the enumeration, which prompted Congress to consider changing the population schedule .
In response to
complaints from statisticians both in and out of Congress about the accuracy of the 1840 count, Congress appointed a Census Board to investigate the form and content of the census . This was the first time in the sixty-year history of the census that decisions surrounding the decennial census were put in the hands of men specifically appointed to wrestle with census issues . Beginning in 1850, individuals rather than households were the enumeration unit, with the same questions put to every person separately .
Thus, data on sex, race, and age could be collected
via only three columns, with no predetermined limit placed on the number of race and age subcategories . This change was revolutionary in its implications .
More substantive areas could be
covered without sacrificing legibility ; answers could be recorded using detailed classifications (e .g ., ages 0 to 100 plus); aggregate results could be reported in tables cross-tabulating any two variables; and the burden of tabulating the returns shifted to a large clerical staff at the central Census Office . Enumeration Procedures .
The 1850 decennial census of population was conducted under the
supervision of 45 marshals of the judicial districts of the United States and 3,231 assistant marshals . Marshals had the power to appoint as many assistants as they deemed necessary to carry out the enumeration. The characteristics of the assistants were to be those of "assiduous industry, active intelligence, pure integrity, great facility and accuracy of computation" and an "intimate knowledge of the division allotted to them ." The establishment of the Census Board and the creation of the Department of Interior in 1850 dramatically improved some aspects of census administration .
First, marshals and their appointed
assistants received written enumeration instructions in addition to circulars explaining each inquiry . Second, personal correspondence with the office of the Secretary of the Interior provided marshals
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Page 3 4 with a minimum of training and oversight.
The actual procedure of canvassing the population,
however, remained virtually unchanged from the first census .
Conclusion . document .
Despite these administrative and procedural difficulties, the 1850 census is a remarkable This was an era in which bureaucratic and administrative organization was nascent,
training and oversight of enumerators minimal, communication slow and difficult at best, and processing and tabulation rudimentary . Yet the Census Office organized a clerical staff of 160; prepared schedules and numerous forms; disbursed information and payments to marshals and their assistants ; published over 2,100 pages of reports; and hand tabulated census data on 23 .2 million individuals . Sources Consulted:
1.
Margo J. Anderson, The American Census: A Social History (Yale
University Press, 1988) . 2. J .D .B . DeBow, Compendium of the Seventh Census
(GPO,
1854) . 3 .
Patricia Cline Cohen, A Calculating People : The Spread ofNumeracy in Early America (University of Chicago Press, 1982) .
4. W. Stull Holt, The Bureau of the Census: Its History, Activities and
Organization (Brookings Institution; 1929) . Growth of the U.S . Census (GPO, 1900) .
5.
Carroll Wright and William C . Hunt, History and
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INSTRUCTIONS TO MARSHALS AND ASSISTANT MARSHALS, CENSUS OF 1850 .
To the Marshals : Having appointed your assistants, and received a duplicate of the oath of office taken by each, pursuant to your instructions from this Department, of the 25th ultimo, you will proceed immediately to the further execution of your duty, as defined by the act. It is an important service, looked to in its results with much interest, and it is expected that you will use every effort to discharge it with promptness, efficiency, and exactness . You will be immediately furnished, by express, with a portfolio for each of your assistants,
and a sufficient number of blanks for each to commence work . The necessary additional blanks will be, in like manner, furnished you as soon as practicable. As 160 names may be entered on one sheet of population returns, and as three copies altogether are required, it follows that, for 160 names, 3 sheets of schedule No . 1 will be needed ; and that for a district of 20,000 free inhabitants, 375 sheets would be required .
To the number,
however, which is required, on an accurate calculation, an addition of 25 per cent should be made to cover possible errors, losses, etc. ; so that for a population of 20,000 in any one district, there should be sent 470 sheets of population blanks, or schedule No . 1 . You will, accordingly, estimate the number of free persons in each assistant's district, and -calculate thereon the number of this schedule (No. 1) which will be required ; and you will apportion the other schedules according to the character of the district, whether it be agricultural, planting, mining, manufacturing, or mercantile . The portfolios and schedules are to be transmitted by you to your assistants by mail, pursuant to the seventeenth section of the act, unless a more eligible mode can be resorted to, without expense . No . 2.
Of schedule No . 2, Slave Inhabitants, the same number will be required for a slave
population of 20,000 that would be required for the same number of free persons, as each sheet will include the same number of slaves that schedule No . 1 will of free population . No . 3.
No less than four copies of schedule No . 3 should be sent to each assistant, the fourth
copy being sent to provide for loss or accident; and cases will not very frequently occur, except in populous districts, where more than that number will be necessary. No . 4.
Of the Agricultural schedule, you can be that only judge of what number will be
requisite for a particular subdivision.
Four sheets of schedule No . 4 should be sent for every eighty
farm or plantation owners or occupiers. No . 5 .
Of schedule No . 5, Statistics of Industry, there should be sent to the assistants about
four sheets for each thirty manufacturers in his district ; or forty, provided that manufactories are generally on a small scale.
The statistics relating to four blacksmiths would not require more room
than those relating to one woolen or cotton factory. No . 6.
Of schedule No . 6, Social Statistics, it is presumed that four sheets will be sufficient
for most assistants, except in cities ; and even there, unless that social statistics for a whole city should be taken
by
one individual .
If more than three copies of any schedule be required in a subdivision, six will be needed, as
there must be three copies of every variety of statistics taken. You should use much care in the distribution of the blanks, in order that the supply be not unnecessarily exhausted.
Having furnished your assistants with the blanks and instructions, you will direct them to
inform you when they commence the enumeration of the district assigned, and at least once in every
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two weeks, where mail facilities exist, they should be required to inform you of the progress made in the work .
Failing to get such information from any assistant, it will be your duty to make inquiries
concerning the district, so as to be assured that the assistant is at work, and to take those efficient steps which the law provides, to remedy any evil or inattention which may exist.
You have, at any
time, for cause sufficient, the power to cancel the appointment of an assistant, and to appoint another for the district ; and it is your, duty to do so whenever the public interest suffers from, the neglect or incompetency of any assistant. 2.
By the seventh section of the above act, it is made your duty "to keep an accurate record
of the name, and area in square miles, of each subdivision, and of each assistant within your The object of this proviso is to determine the rate of payment to be made to the assistants .
district ."
It is supposed and believed that in all States the areas of the different subdivisions may be pretty accurately known.
It should be ascertained with complete exactness when the means exist for doing
so . Where the reputed or estimated area is upon data not entirely reliable, this fact should be stated . In the new States, where the county and town divisions are made by parallel lines, little difficulty can occur, and in the older States the gazetteers usually contain the required information; but, as they can not always be relied on, and counties have undergone change of character, the information should be obtained from the county surveyor, or clerk, or othei reliable source ; and you should require each assistant to furnish you with a certificate, under the hand of some reliable person, of the number of square miles in his district . You should consider this as one of your first duties, so that, if possible, it may be made known to the assistant, soon after his appointment, the area of his district, and thus prevent the occurrence of any subsequent dispute. You should arrange a book, in some convenient method, by which you can easily refer to the description of the district, the number of square miles therein, and the name of each assistant, and the state of the work in each subdivision .
Postmasters should be notified concerning the provision in the seventeenth section of the act,
which authorizes you and your assistants to frank all census packages and letters. 3.
By the fifth section it is also made your duty " carefully to examine the returns of each
assistant," to see whether the work has been executed in a lawful manner . You should carefully examine the returns, to see that every part of the district embraced has been visited, and all the required information obtained, and the schedules filled up according to the instructions . 4.
By the fifth section it is provided, that you shall transmit, forthwith, "one set of the
returns to the census office . " This set should be transmitted without any delay, and in convenient sized packages .
You should keep an accurate account of returns forwarded to the census office, and
of the date at which they were mailed ; and if the receipt of them is not acknowledged in due course of mail, you should write and inquire whether they have been received .
You are required, by the
same section, to transmit the other copy thereof to the office of the secretary of the State, or Territory, to which your district belongs . 5.
You and your assistants are requested to obtain, if practicable, and forward to the census
office, copies of local printed reports of towns, counties, and States, relating to the expenditures, to
schools, pauperism, crime, insanity, and other local matters which are required to be investigated by the schedules.
6. You should instruct your assistants, upon the receipt of the instructions and blanks, to
commence immediately to discharge their duty, and use all exertions to have them performed during
the earlier portion of the time allotted for the work, and not procrastinate, in the expectation of being able to prosecute the work during the latter portion of the period .
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When such procrastination occurs, or other causes (which might by timely caution be avoided) operate to defeat the consummation of the duty, neither you nor your assistants will be entitled to compensation, but render yourselves liable to penalty. To the Assistant Marshals : 1.
The assistant marshal, having been duly commissioned, will be provided with a portfolio,
to be furnished with the schedules, of sufficient size to contain several sheets of the same without folding, that may be easily opened, and used for writing on, if necessary; and he should furnish himself with ink, blotting paper, and pens .
Strings should be attached to the portfolio, to prevent the
loss of any of its contents . 2.
He is to approach every family and individual from whom he solicits information with
civil and conciliatory manners, and adapt himself, as far as practicable, to the circumstances of each, to secure confidence and good will, as a means of obtaining the desired information with accuracy and dispatch .
3 . If any person, to whom application is made for information should refuse to give it, or
should designedly give false information, the assistant should inform him of the responsibility he thereby incurs, and that he renders himself liable to a penalty, according to the fifteenth section of the act of Congress . 4.
The act provides that "the assistant marshals shall make the enumeration by actual
inquiry at every dwelling house, or by personal inquiry of the head of every family, and not otherwise. " This requirement must be strictly observed . 5.
As soon as the schedules are filled up, and the information in relation to each family is
obtained according to the instructions, the assistant should read over, and exhibit to the parties from whom he received the same, the record of the information obtained, and correct or supply any error or omission . 6.
The object of this rule is to prevent mistakes, and secure accuracy .
Each assistant is to complete the enumeration with as little delay as possible, after
commencing it, and should inform the marshal, at least once in two weeks, of the progress he is making in his district . 7. On each page of the population and agricultural schedules is to be inserted the date when such page was commenced, although it may not have been completely filled up until the following day.
When the whole enumeration in his district shall have been completed, two complete copies of
all the pages are to be made . These are to be carefully read over, and each compared to see that it is correct and agrees with the original . 8. Each assistant is to sign his name on each page of the schedule, and certify, and make oath or affirmation, at the end of each set of returns, that they were made according to his oath and instruction, to the best of his knowledge and belief . Two of the sets are to be forwarded to the marshal of his district, and one filed with the clerk of the court for preservation with the county records; in proof of the fling of which he must procure, and forward to his marshal, the certificate of the clerk of the county . Discretion as to what schedules will be needed by each assistant is lodged with the marshal, and is at all times to be used .
In the free States schedule No . 2 will be omitted .
For the guidance of assistants, each will be furnished with a set of schedules filled up in the manner contemplated by the act of Congress and these instructions .
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CIRCULAR TO MARSHALS, ETC. - CENSUS OF 1850 To the United States Marshals and Assistants : Information has been received at this office that in some cases unnecessary exposure has been made by the assistant marshals with reference to the business and pursuits, and other facts relating to individuals, merely to gratify curiosity, or the facts applied to the private use or pecuniary advantage of the assistant, to the injury of others . Such a use of the returns was neither contemplated by the act itself nor justified by the intentions and designs of those who enacted the law. No individual employed under sanction of the Government to obtain these facts has a right to promulgate or expose them without authority. Although designed ultimately for the use of the people at large, the Department reserves to itself the privilege of examining into the correctness of the returns, and arranging them in proper form for publication by Congress before any other use shall be made thereof; and all marshals and assistants are expected to consider the facts intrusted to them as if obtained exclusively for the use of the Government, and not to be used in any way to the gratification of curiosity, the exposure of any man's business or pursuits, or for the private emolument of the marshal or assistants, who, while employed in this service, act as the agents of the Government in the most confidential capacity . When . your original copies are filed with the clerks of the courts and secretary of your state, they will be under the control of those officers and subject to the usual regulations of the respective offices, and you can enjoy the same access to them which can be had by every citizen. To the publication of the mere aggregate number of persons in your district there can be no objection.
EXPLANATION OF SCHEDULE NO . l-FREE INHABITANTS. This schedule is to be filled up in the following manner : Insert in the heading the name of number of the district, town, or city of the county or parish, and of the state, and the day of the month upon which the enumeration was taken:
This is to be attested
on each page of each set, by the signature of the assistant. The several columns are to be filled as follows : 1 . Under heading 1, entitled "Dwelling houses numbered in the order of visitation," insert the number of dwelling houses occupied by free inhabitants, _as they are visited.
The first house visited
to be numbered 1 ; the second visited, 2 ; the third one visited, 3 ; and so on to the last house visited in
the subdivision . By a dwelling house is meant a separate inhabited tenement, containing one or more families under one roof. Where several tenements are in one block, with walls either of brick or wood to divide them, having separate entrances, they are each to be numbered as separate houses ;
but where not so divided, they are to be numbered as one house.
If a house is used partly for a store, shop, or for other purposes, and partly for a dwelling house,
it is to be numbered as a dwelling house. Hotels, poorhouses, garrisons, hospitals, asylums, jails, penitentiaries, and other similar institutions, are each to be numbered as a dwelling house; where the house is of a public nature, as above, write perpendicularly under the number, in said column, the name or description, as "hotel," "poorhouse," etc. 2.
Under heading 2; entitled "Families numbered in the order of visitation," insert the number of
the families of free persons as they are visited. The first family visited by the assistant marshal is to be numbered 1 ; the second one visited, 2; and so on to the last one visited in his district . By the term family is meant, either one person living separately in a house, or a part of a house, and providing for him or herself, or several persons living together in a house, or in part of a house, upon one common means of support, and separately from others in similar circumstances .
A widow
1850 Public Use Microdata Sample
The 1850 Census Enumeration
User's Guide and Technical Documentation
Page 3 9
living alone and separately providing for herself, or 200 individuals living together and provided for by a common head, should each be numbered as one family . The resident inmates of a hotel, jail, garrison, hospital, an asylum, or other similar institution, should be reckoned as one family . 3.
Under heading 3, entitled, "The name of every person whose usual place of abode on the 1st
day of June, 1850, was in this family," insert the name of every free person in each family, of every age, including the names of those temporarily absent, as well as those that were at home on that day. The names of every member of a family who may have died since the 1st day of June is to be entered and described as if living, but the name of any person born since the lst day of June is to be omitted.
The names are to be written beginningwith the father and mother ; or if either, or both, be
dead, begin with some other ostensible head of the family ; to be followed, as far as practicable, with the name of the oldest child residing at home, then the next oldest, and so on to the youngest, then the other inmates, lodgers and borders, laborers, domestics, and servants . All landlords, jailors, superintendents of poorhouses, garrisons, hospitals, asylums, and other similar institutions, are to be considered as heads of their respective families, and the inmates under their care to be registered as members thereof, and the details concerning each designated in their proper columns. Indians not taxed are not to be enumerated in this or any other schedule . By place of abode is meant the house or usual lodging place of a person .
Anyone who is
temporarily absent on a journey, or for other purposes, without taking up his place of residence _elsewhere, and with the intention of returning again, is to be considered a member of the family which the assistant marshal is enumerating . Students in colleges, academies, or schools, when absent from the families to which they belong, are to be enumerated only as members of the family in which they usually boarded and lodged on the lst day of June . Assistant marshals are directed to make inquiry at all stores, shops, eating houses, and other similar places, and take the name and description of every person who usually slept there, provided such person is not otherwise enumerated . Inquiries are to be made at every dwelling house, or of the head of every family .
Those only
who belong to such family, and consider it their home or usual place of abode, whether present or temporarily absent on a visit, journey, or a voyage, are to be enumerated .
Persons on board of
vessels accidentally or temporarily in port , temporarily boarding for a few days at a sailors boarding or lodging house, if they belong to other places are not to be enumerated as the population of a place . The sailors and hands of a revenue cutter, which belongs to a particular port should be enumerated as of that port . lakes, rivers, and canals .
A similar rule will apply to those employed in the navigation of the
All are to be taken at their homes or usual place of abode, whether present
or absent ; and if any live on board of vessels or boats who are not so enumerated, they are to be taken as of the place where the vessel or boat is owned, licensed, or registered .
And the assistant
marshals are to make inquiry at every vessel and boat employed in the internal navigation of the United States, and enumerate those who are not taken as belonging to a family on shore; and all persons of such description in any one vessel are to be considered as belonging to one family and the vessel their place of abode . The assistants in all seaports will apply at the proper office for lists of all persons on a voyage at sea and register all citizens of the United States who have not been registered as belonging to some family . Errors necessarily occurred in the last census in enumerating those employed in navigation because no uniform rule was adopted for the whole United States .
Assistant marshals are required to
be particular in following the above directions, that similar errors may now be avoided .
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1850 Public Use Microdata Sample - User's Guide and Technical Documentation
4 . Under heading 4, entitled "Age,;" insert in figures what was the specific age of each person at his or her last birthday previous to the 1st
of June,
opposite the name of such person. If the exact
age in years can not be ascertained, insert a number which shall be the nearest approximation tot. The age, either exact or estimated, is to be inserted . If the person be a child under 1 year old, the entry is to be made by the fractional : parts of a year, thus : one month, one-twelfth; two months,, two-twelfths ; three months, three-twelfths, and so on to eleven months, eleven-twelfths . 5 . Under heading 5, entitled "Sex," insert the letter M for male and F for female; opposite the name, in all cases, as the fact may be . 6. - Under heading 6, entitled "Color," in all cases where the person is white; leave the space blank; in all cases where the person is black, insert the letter B ; if mulatto, insert M.
It is very
desirable that these particulars be carefully regarded : 7. Under heading 7, entitled "Profession, occupation,: or trade of each person over 15 years of age," insert opposite the name of each male the specific profession, occupation, or trade which the said person is known and reputed to follow in the place where he resides - as clergyman ; physician, lawyer, shoemaker, student, farmer, carpenter, laborer, tailor, boatman, sailor, or otherwise ; as the fact may be . When more convenient, the name of the article he produces may be substituted. When the individual is a clergyman, insert the initials of the denomination to which he belongs before his profession - as Meth. for Methodist, R.C . for Roman Catholic, O .S .P . for Old School Presbyterian, or, other appropriate initials, as the fact may be . When a person follows several professions or occupations the name of the principal one only is to be given. If' a person follows no particular occupation ; the space is to be filled with the word "none." 8.
Under heading 8 insert the value of real estate owned by each individual enumerated .
You
are to - obtain the value of real estate by inquiry of each individual who is supposed to own real estate, be the same located where it may, and insert the amount in dollars. No abatement of the value is to be made on account of any lien or incumbrance thereon in the nature of debt. 9.
Under heading 9, "Place of birth."
in the family .
The marshal should ask the place of birth of each person
If born in the State or Territory where they reside, insert the name or initials of the
State or Territory, or the name of the government or country if without the United States ;
The
names of the several States may be abbreviated. Where the place of birth is unknown, state "unknown : " 10 .
Under No . 10 make a mark, or dash, opposite the name of each person married during the
year previous to the 1st of June, whether male or female .: 11 .
Under heading 11 ; entitled "At school within the last year ."
The marshal should ask what
member of this family has been at school within the last year ; he is to insert a mark, thus ; (1),
opposite the names of all those, whether male or female, who have been at educational institutions within that period . -Sunday schools are not to be included . 12 .
Under heading 12, entitled "Persons over 20 years of age who cannot read and write ."
The
marshal should be careful to note all persons in each family, over 20 years of age, who can not read and write, and opposite the. name of each make a mark, thus, (1) . The spaces opposite the names of those who can read and write are to be left blank.
If the person can read and write a foreign
language, he is to be considered as able to read and write . 13 .
Heading 13, entitled "Deaf and dumb, blind, insane ; idiotic, pauper, or convict."
The
assistant marshal should ascertain if there be any person in the family deaf,: dumb, idiotic, blind, insane, or pauper . If so, who?
And insert the term "deaf and dumb," "blind," "insane, ". and
"idiotic," opposite the name of such :persons ; as the fact maybe . When persons who had been convicted of crime within the year reside in families on the lst of June; the fact should be stated, as in the other cases- of criminals; but, as the interrogatory might give offense, the assistants had better
1850 Public Use Microdata Sample User's Guide and Technical Documentation
The 1850 Census Enumeration Page 41
refer to the country record for information on this head, and not make the inquiry of any family . With the county record and his own knowledge he can seldom err. Should a poorhouse, asylum for the blind, insane or idiotic, or other charitable institution, or a
penitentiary, a jail, house of refuge, or other place of punishment, be visited by,the assistant marshal, he must number such building in its regular order, and he must write after the number, and perpendicularly in the same column (No . 1) the nature of such institution - that it is a penitentiary, jail , house of refuge, as the case may be ; and in column 13, opposite the name of each person, he must state the character of the infirmity or misfortune, in the one case, and in the other he must state the crime for which each inmate is confined, and of which such person was convicted; and in column No . 3, with the name, give the year of conviction, and fill all the columns concerning age, sex, color, etc., with as much care as in the case of other individuals.
Variable Descriptions Page 42
1850 Public Use Microdata Sample User's Guide and Technical Documentation
VARIABLE DESCRIPTIONS This section provides a brief description of the variables in the sample . Further details on most variables can be found in the detailed sections above and in the enumeration instructions which are reproduced above. The classification schemes and frequency distributions for
each variable
are
given in the codebook . Most variables are classified with numeric codes . The only exceptions are the household record variable RECTYPE (Record Type), and person record variables RECTYPE (Record Type), FNAME (First Name), and LNAME (Last Name), which use alpha characters .
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Variable Descriptions
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VARIABLES ON THE HOUSEHOLD RECORD
H1 RECTYPE - Record Type Indicates whether a record is a household record or a person record .
Household records are type H,
and person records are type P. H2-3 YEAR -1850 Census Identifier Census year identifier .
This variable gives the middle two digits of the census year for identification
within the IPUMS. H4-11 SERIAL - Household Serial Number Unique serial number for each household. H12-13 DATANUM - 1850 Data Set Number IPUMS data set number . This sample is coded 01 . H14-15 NIII - Number of Person Records in Household Total number of persons in the sampled unit (household or group quarters).
H16-19 DWSIZE - Dwelling Size Number of persons in the entire dwelling . If the entire dwelling was taken (sampling rule 1), this is based on a machine count. If only one household was taken from a large multi-household dwelling, or the case was sampled as group quarters, (rules 2 through 4), DWSIZE is based on a hand count by the data-entry operator .
A missing value indicates that dwelling numbers were omitted by the
marshal. H2O-21 NUMHH - Number of Households in Dwelling In cases sampled as entire dwellings (sampling rule 1), this is based on a machine count.
In cases
sampled as households or group quarters (sampling rules 2 through 4) NUMHH is based on a hand count by the data-entry operator .
A missing value indicates that dwelling numbers were omitted by
the marshal . H22-23 REGION - Census Region Identifies 1980 census regions .
Territories are placed in the census region that they eventually
joined .
H2425 STATEICP - State of Enumeration (ICPSR system) There are two variables showing state or territory of enumeration.
The first, STATEICP, uses the
coding scheme of the Inter-University Consortium for Political and Social Research, and allows easy . merging of the 1850 Public Use Microdata Sample with ICPSR data files.
Variable Descriptions
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H26-27 STATEFIPS - State of Enumeration (FIPS system) Identifies state or territory of enumeration by the Federal Information Processing Standards (FIPS) code in alphabetical order by state name . H28-31 CITY - City Identifier Unique identification code for each of the ninety-eight largest cities in 1850 . H32 URBAN - Urban/Rural Status Urban places are defined as incorporated municipalities and New England townships with a population of 2,500 or more .
Users should be aware that because of the poor quality of many
returns, particularly in the South and West, many people who may have lived in urban areas are not classified as such . For further discussion of this problem, see section on "Geographic Coding" above. H33-37 CITYPOP - City Population (in hundreds) Population totals in hundreds for all incorporated places and New England towns. Persons outside of incorporated places receive a value of 0 for CITYPOP. In New England there are relatively few incorporated places ; towns usually assume the functions of municipal governments, so we assigned populations to all New England towns . (Town in New England is the equivalent of township in other parts of the country) . elsewhere .
These towns, however, are not precisely comparable to incorporated places
Persons whose residence was listed as a township outside New England were categorized
as residents of unincorporated places . For further explanation, see the section on "Geographic Coding ." H3841 COUNTY - County Code County codes based on the ICPSR system .
These allow easy linking with the ICPSR county data
tape for those who want to add county-level variables .
Some persons residing in territories had no
county and were assigned a county code of 9999 .
H42-44 SEA - State Economic Area
-
--
State Economic Areas are relatively homogeneous subdivisions of states . They consist of counties or groups of counties that had similar social and economic characteristics in 1950 . codes are available in the IPUMS from 1850 through 1950 . J . Bogue's State
Economic
Areas (Washington:
Compatible SEA
For further information consult Donald
Government Printing Office, 1951).
H45 GQ - Group Quarters Residence Residence in institution or other units with over thirty members.
This variable also identifies units
that would have been sampled as group quarters in later census years. See "Sample Design" above. H46-48 GQCODE - Group Quarters Code This classification of institutions is coded to be compatible with the MUMS classification . The first digit identifies one of eight general group quarters categories (correctional institutions, health-related, homes for dependents, etc.) and the second digit gives a more detailed breakdown. on "Institutions," above .
See the section
1850 Public Use Microdata Sample
Variable Descriptions
User's Guide and Technical Documentation
Page 45
H49-50 GQFUND - Group Quarters Funding Code Indicates the source of support or institutional affiliation where that could be determined . GQCODE, this variable follows the system developed for the IPUMS .
Like
For more information, see
the section on "Institutions," above . H51 FARM - Farm Identifies farms as households in which any member reported their occupation as farmer . H52 SAMPUNIT - Sample Unit Identifies the sampling rule used for each case .
See the "Sample Design" section above.
Cases may
be taken as dwellings, households, related groups, or individuals. Category 1 identifies households where the entire dwelling is included in the sample ; if the household is located in a multi-household dwelling, the other households in the dwelling will appear in the same record . households within large multi-household dwellings.
Category 2 identifies
Category 3 identifies households taken in
districts where dwelling information was missing. Categories 4 and 5 identify related groups in group quarters and individuals in group quarters ; these cases should be omitted for analysis of households or household characteristics. The final SAMPUNIT category, "Fragment," denotes parts of households that were initially missed by marshals and later entered on the census forms at the end of the enumeration district . It was not feasible to locate the correct household to which these people belonged .
To ensure that each
enumerated individual had a 1-in-100 chance of inclusion in the sample, we treated these cases as if they were residents of group quarters . Thus, fragments with no obviously related adjacent kin were included only if the sample point fell on their line ; fragments consisting of a group of kin were included only if the sample line fell on the first individual in the group . H53 HHSEQ - Sequence of Household in Dwelling Sequence number of each household in the dwelling .
This variable is always equal to 1 except when
the sample includes more than one household from a dwelling (that is, for multi-household dwellings sampled under rule 1) .
H54-57 NLTMPERHH - Number of Person Records in Household Number of person records following the household record .
For cases sampled under rules 1 or 2,
this variable is equivalent to HHSIZE ; otherwise, it is a machine count of the number of person records in the sample unit taken. H58-61 REEL - Microfilm Reel Number
. ,.
Identifies the microfilm reel from which the case was taken, using the Census Bureau's numbering system for reels. H62-64 PAGENO - Microfilm Page Number These page numbers were stamped on the census pages before microfilming . This can be useful in locating cases included in the 1850 Public Use Microdata Sample on the original schedules.
Variable Descriptions Page 46
1850 Public Use Microdata Sample User's Guide and Technical Documentation
H65-66 SEQHH - Sequence in Dwelling of First Family Taken If the entire dwelling is included in the sample (sampling rule 1), SEQHH takes a value of 1 . Under sampling rules 2 through 4, SEQHH indicates the order of the household within the dwelling .
For
example, if a single household is taken from a large multi-household dwelling, SEQHH indicates whether the household is the first household listed in the dwelling, the second, and so on . H67 SIDE - Side of Enumeration Form Each enumeration page had two sides, and only the front was stamped with a page number .
This
variable indicates if the case was drawn from the front (side 1) of the form or the back (side 2) . This can be useful in locating cases included in the 1850 Public Use Microdata Sample on the original schedules .
H68-69 DWTAKE - Number of Persons Taken in Dwelling Number of person records included in the sample from the current dwelling, across all households taken in the dwelling . When the entire. dwelling is included (sampling rule 1), DWTAKE is the same as DWSIZE .
H70 ENUMDUR - Duration of enumeration Length of time, in days, that it took the enumerator to record the cases on the census page . Almost 90 percent of the census pages were completed in a day, but in some rural districts it took over a week to gather enough names to fill up a sheet.
H71-72 ENUMMO - Month of enumeration Month in 1850 that the marshal began to gather information for the census page containing the case . Enumeration began on June 1, 1850 and the results returned to the Secretary of the Interior on or before November 1, 1850 .
H73-74 ENUMD - Day of enumeration Day of the month that the marshal began to gather the information on the census page . H75-77 LINE - Line number Identifies the line number on the enumeration form of the randomly selected sample point. See section on "Sample Design" above .
H78-81 DWNUM - Dwelling number Dwelling number appears in the first column of the census form, and is our principal means of establishing where one dwelling ends and the next one begins . numbers, and these cases were assigned a DWNUM of zero .
Some marshals omitted dwelling
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Variable Descriptions Page 47
VARIABLES ON THE PERSON RECORD
PI RECTYPE - Record Type See H1 . P2-3 YEAR - 1850 Census Identifier See H2-3 . P4-11 SERIAL - Serial Number See H4-11 . P12-13 PERNUM - Sequence of Person in Household Sequence number of each person in a household.
This variable can be combined with SERIAL to
create a unique identifier for every individual in the sample . P14-15 MOMLOC - Position in Household of Own Mother A pointer to the. position of the individual's own mother within the household, expressed in terms of the mother's PERNUM . This variable is useful for the more sophisticated forms of own-child fertility analysis and for attaching parental characteristics to individuals . For further information, see the section on "Family Interrelationships" above. P16 MOMRULE - Rule for Linking Mother The specific rule used for linking the individual's own mother .
For further information, see the
section on "Family Interrelationships" above.
P17-18 POPLOC - Position in Household of Own Father A pointer to the location of the individual's own father within the household, expressed in terms of the father's PERNUM . For further information, see the section on "Family Interrelationships" above .
P19 POPRULE - Rule for Linking Father The specific rule used for linking the individual's own father . For further information, see the section on "Family Interrelationships" above . P20-21 SPLOC - Position in Household of Own Spouse A pointer to the location of the individual's own spouse within the household, expressed in terms of the spouse's PERNUM .
This variable is useful for attaching and analyzing spouse's characteristics .
For further information, see the section on "Family Interrelationships" above . P22-23 ELDCH - Age of Eldest Own Child Age of the eldest coresident own child of the individual . For further information, see the section on "Family Interrelationships" above .
Variable Descriptions Page 48
1850 Public Use Microdata Sample User's Guide and Technical Documentation
P24-25 YNGCH - Age of Youngest Own Child Age of the youngest coresident own child of the individual . For further information, see the section on "Family Interrelationships" above.
P26-27 NFAM - Number of Own Family Members in Household A count of the individual's own kin within the household.
For further information, see the section on
"Family Interrelationships" above. P28 NCHILD - Number of Own Children in Household A count of the individual's own children, with no age restrictions . For further information, see the section on "Family Interrelationships" above. P29 NCHLT5 - Number of Own Children Under Age 5 in Household A count of the individual's own children under 5 within the household: this variable is intended primarily to aid in fertility analysis . For further information, see the section on "Family Interrelationships" above.
P30-31 IMPREL - Imputed Relationship to Head Imputed relationship to head of household. For further information, see the section on "Family Interrelationships" above .
P32-34 AGE - Age of Person Expressed in Years
P35 SEX - Sex Sex of individual .
Missing or inconsistent information on sex could almost always be inferred from
information in the first name and relationship fields .
P36-38 RACE - Race Race of individual . The 1850 population schedule of free inhabitants distinguished between free Blacks and Free Mulattos . The marshal instructions placed emphasis on the careful reporting of these categories . P39 MARRINYR - Married Within Year Indicates persons married within the previous census year, from May 31, 1849 to June l , 1850 .
P40 BLIND- Blind Indicates blind individual . P41-45 BPL-Birthplace The birthplace of persons based on the IPUMS classification system . For additional information, see "Geographic Coding" above .
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Variable Descriptions Page 49
P46 SCHOOL - School Attendance in the Past Year Indicates whether person attended school within the past year .
Some marshals failed to indicate
school attendance in the SCHOOL column, but noted it in the occupation column .
P47 LIT - Literacy This variable determined whether persons 20 years old and older could not read and write.
If the
person could read and write a foreign language, they were considered as able to read and write . P48-50 OCC1880 - Occupational Classification, 1880 System Occupations of males over the age of fifteen, classified by the 1880 system .
The 1880 Census
occupational classification scheme divided the working population into 265 detailed categories . Individual responses included over 10,000 variant occupational listings, and these were allocated to the 1880 categories with the aid of a variety of occupational dictionaries and census technical papers from later years. In general, we attempted to follow the 1880 procedures for classifying occupations. We have added codes in the range 301 to 306 to capture non-occupational responses.
Two of these
categories, "Keeping house". and "Capitalist," could be considered to be occupations, but they do not fit into the 1880 system . See the section above on "Occupations," above. P51-53 OCC1950 - Occupational classification, 1950 system Occupations of males over the age of fifteen, classified by the 1950 system . The 1950 Census Bureau occupational classification system is the easiest one to approximate across different public use microdata samples .
Users who are more interested in socioeconomic status than in economic sector
will generally find the 1950 classification more useful than the 1880 classification .
See the section
above on "Occupations," above. P54-55
SCORE - Income Score
Income score based on the man's occupation under the 1950 classification system (OCC1950) . The score gives that occupation's median total income in 1950 (in hundreds of dollars) . be a general indicator of economic status . special issue of Historical Methods .
It is intended to
For more detail and discussion, see the Winter, 1995
-
--
P56-61 REALPROP- Value of real property owned This variable indicates the value of real estate owned by each individual enumerated . Marshals obtained the value of real estate by inquiry of each individual who owned real estate . P62 DEAF- Deaf and Dumb Includes persons defined as "dumb," deaf only, and dumb only .
P63 IDIOTIC Includes persons listed as "idiotic," "fool," "simple," etc . P64 INSANE Includes persons listed as "insane," "delirious," "maniacs" and "lunatics ."
Variable Descriptions Page 50
1850 Public Use Microdata Sample User's Guide and Technical Documentation
P65 PAUPER Indicates person was a "pauper."
P66-67 SURSIM - Surname Similarity Sequence number for each unique surname encountered in the dwelling .
Individuals with the same
SURSIM code within the dwelling shared the same surname. P68-69 AGEMO - Age in months The age in months of infants less than one year old on .June 1, 1850 . P70 CRIME- Crime If person is listed in a family, the variable indicates any crime they were convicted of within the past year . If the person is in an institution such as a penitentiary, the variable indicates the crime for which they were convicted.
P71-86 FNAME- First Name Person's first name in alphabetic characters including middle initial . P87-102 LNAME- Surname Person's surname in alphabetic characters .
1850 Public Use Microdata Sample
Record Layout
User's Guide and Technical Documentation
INDEX TO CODEBOOK
Page 51
Record Layout Page 52
1850, Public Use Microdata Sample User's Guide and Technical Documentation
HOUSEHOLD RECORD LAYOUT Character Location_
Variable Name
H1 H2-3
RECTYPE YEAR
H4-11 H 12-13 H14-15 H16-19 H2O-21
SERIAL DATANUM NHH DWSIZE NUMHH
H22-23 H24-25 H26-27
REGION STATEICP STATEFIPS
H28-31 H32 H33-37 H38-41
CITY URBAN CITYPOP COUNTY
H42-44 H45 H46-48 H49-50
SEA GQ GQCODE GQFUND FARM
H51 H52 H53 H54-57 H58-61 H62-64 H65-66 H67 H68-69 H70 H71-72 H73-74 H75-77 H78-81
SAMPUNIT HHSEQ NUMPERHH REEL PAGENO SEQHH SIDE DWTAKE ENUMDUR ENUMMO ENUMD LINE DWNUM
Variable Description
Codebook Pa ge
NQ,.
Record Type Identifier (H or P) . . . . . . . . . . . . . 1850 Census Identifier . . . . . . . . . . . . . . . . . . . . . . . . Household Serial Number . . . . . . . . . . . . . . . . . . . . 1850 Data Set Number . . . . . . . . . . . . . . . . . . . . . . . . Number of Person Records in Household . Dwelling Size . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Number of Households in Dwelling . . . . . . . . Census Region . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . .
.. . .. ... ... .. . .. ... ..... ... .. . .. . .. ... .. . .. ... .. . .. ... ... .. . .. ... ... .. . .. ... ... .. ... ... ... .. ... ... ..... ... .. . ..... ... ..... ... .. . .. ...
.. .. .. ..
... ... ... . ..
... .. . ... ... .. . .. ... ... .. . .. ... .... ... ........ ... ... .....
.. . ... ... .. .
54 54 54 54 . . . . . 54 . . . . . 54 . . . . . 55 . . . . . 55 . . . . . 55 . . . . . 56
State of Enumeration (ICPSR system) State of Enumeration (FIPS system) . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . City Identifier . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Urban/Rural Status . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . City Population (in hundreds) . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . County Code . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . State Economic Area . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Group Quarters Residence . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Group Quarters Code . . . . Group Quarters Funding Farm . . . . . . . . . . . . . . . . . . . . . . . . Sample Unit . . . . . . . . . . . . . . .
.. ... .. ... Code . . .. . ... ..... .....
..... ..... . . . ... . . . . . . .. .. .. .. ...... ..
... ... ..: ...
.. ... .. . ..... ... . ... ... ... .....
... .. . ... ...
. . 57 . . 59 . . 59
.. . . 60 . . 60 . . . . . . . . . . . 60 . . . . . . . . . . . . . . . 61 . . . . . . . . . . . . . . . 61 ... .. ... . . . 62
Sequence of Household in Dwelling . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 62 Number of Person Records in Household . . . . . . . . . . . . . . . . . . . . . . . . . . . . 62 Microfilm Reel Number . . . . . . . . . . . . . . . . . . . . . . . . . . . . .. . . . . . . . . . . . . . . . . . . . . 63 Microfilm Page Number . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 63 Sequence in Dwelling of First Family Taken . . . . . . . . . . . . . . . . . . . . . . . . 63 Side of Enumeration Form . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 63 Number of Persons Taken in Dwelling . . . . . . . . . . . . . . . .. . . . . . . . . . . . . 63 Duration of Enumeration . . . . . . . . . . . . . Month of Enumeration . . . . . . . . . . . . . . . . . Day of Enumeration . . . . . . . . . . . . . . . . . . . Line Number . . . . . . . . . . . . . . . . . . . . . . . . . . . . Dwelling Number . . . . . . . . . . . . . . . . . . . . . .
. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 63 . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 63 . . . . . . . . . . . . . . . . . . . . . . . . . _ . . . . . . . . . 64 . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 64 . . . . . . . . . . . . . . . . . . . . . . . . . . .. . . . . . . 64
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Record Layout
Page 53
PERSON RECORD LAYOUT Character
Variable
Location
Name
P12-13 P14-15 P16 P17-18 P19 P20-21 P22-23 P24-25 P26-27 P28 P29
P30-31 P32-34 P35 P36-38
P39
P40 P41-45 P46 P47 P48-50
PERNUM MOMLOC MOMRULE POPLOC POPRULE SPLOC ELDCH YNGCH NFAM NCHILD NCHLTS
IMPREL AGE SEX RACE
MARRINYR BLIND BPL SCHOOL LIT OCC 1880
P51-53 P54-55 P56-61
OCC 1950 SCORE REALPROP
P63 P64 P65
DEAF IDIOTIC INSANE PAUPER
P70
CRIME
P62
P66-67 P68-69
SURSIM AGEMO
Codebook
Variable Description
Page No .
Sequence of Person in Household . . . . . . . . . . . . . . . . . . . . Position in Household of Own Mother . . . . . . . . . . . . . . Rule for Linking Mother . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Position in Household of Own Father . . . . . . . . . . . . . . .
. . . . . . . . . . . . : . . . . . 65 . . . . . . . . . . . . . . . . . . 66 . . . . . . . . . . . . . . . . . . 66 . . . . . . . . . . . . . . . . . . 66
Rule for Linking Father . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Position in Household of Own Spouse . . . . . . . . . . . . . . . . . . . . . . . . . . . . Age of Eldest Own Child . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Age of Youngest Own Child . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Number of Own Family Members in Household . . . . . . . . . . . . . . . Number of Own Children in Household . . . . . . . . . . . . . . . . . . . . . . . . . . Number of Own Children under 5 in Household . . . . . . . . . . . . . . .
. . . . 66 . . . . 67 . . . . 67 . . . . 68 . . . . 69 . . . . 70 . . . . 70
Imputed Relationship to Head . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Age of Individual Expressed in Years . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Sex . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . : . . . . . . . . . . . . . . . . . Race . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Married Within Year . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Blind . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Birthplace . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . School Attendance in the Past Year . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Literacy . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Occupational Classification, 1880 System . . . . . . . . . . . . . . . . Occupational Classification, 1950 System . . . . . . . . . . . . . . . . Income Score . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Value of Real Estate Property Owned . . . . . . . . . . . . . . . . . . . . Deaf and Dumb . . . . . . . . . . . . . . . . . . . . . Slow . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Insane . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Pauper . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . Surname Similarity . . . . . . . . . . . . . . . .
.. ... ..... ... .. . .. . ..... ..... ... ... ... ..... ... .. ... . .. ... .. ... ..... ... ... ... ... .. . .. ... ... ... ..
.. ..... ... . ..... ... ... .. ... ... ... ... .. . .. . ..
. . . .
70 71 73 73
73
73 74
76 76
76
82
86
87 . . . . . . . . . . . . . . . . . . . . 87 . . . . . . . . . . . . . . . . . .. 87 . . . . . . . . . . . . . . . . . . . .88
. . . . . . . . . . . . . . . . . . . . .88 . . . . . . . . . . . . . . . . . . . . 88 Age in months . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 88 Crime . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 89
Codebook . Household Record Page 54
1850 Public Use Microdata Sample User's Guide and Technical Documentation CODEBOOK
Record Type Identifier
RECTYPE HI
37,105
100 .0
37,105
100 .0
37,105
100 .0
3-7,105
100 .0,
37,105
100 .0
37,105
100 .0
37,105
100 .0
37,105
100 .0
37,105
100 .0
37,105
100 .0
1
576
1 .6
2
2,752
7 .4
3
4,161
11 .2
4
4,713
12 .7
5
4,779
12 .9
4,478
12 .1
3,769
10 .2
8
3,127
8 .4
9
2,207
5 .9
10
1,544
4 .2
11
913
2 .5
H
Household Record Identifier
1.850 Census Identifier
YEAR
H2-3
85
1850 Census year identifier
Household Serial Number
SERIAL H4-11 1-37105
Household serial number
1850 Data Set Number
DATANUM
H12-13
01
Data set number
Number of Person Records in Household
NHH H14-15
Dwelling Size
DWSIZE H16-19
12 13
612
1 .6
346
0 .9
1850 Public Use Microdata Sample
Codebook: Household Record
User's Guide and Technical Documentation 2016
Page 55 38
0 .1
74
0 .2
37,105
100 .0
1 2
32,905
88 .7
3
682
4
281
0 .8
1
0 .0
9999
NUMHH
Missing
Number of Households in Dwelling
H2O-21
2,460
90 99
REGION
Missing
243
6 .6 1 .8
0 .7
37,105
100 .0
5,404
14 .6
10,999
29 .6
8,020
21 .6
1,493
4 .0
5,607
15 .1
3,940
10 .6
1,186
3 .2
159
0 .4
Census Region
H22-23 11
New England Division - Maine, New Hampshire, Vermont, Massachusetts, Rhode Island, Connecticut .
12
Middle Atlantic Division - New York, New Jersey, Pennsylvania .
21
East North Central Division - Ohio, Indiana,
22
West North Central Division - Minnesota Territory,
Illinois, Michigan, Wisconsin . Iowa, Missouri .
31
South Atlantic Division - Delaware, Maryland, District of Columbia, Virginia, North Carolina, South Carolina, Georgia, Florida .
32
East South Central Division - Kentucky, Tennessee, Alabama, Mississippi .
33
West South Central Division - Arkansas, Louisiana, Oklahoma, Texas .
41
Mountain Division -- New Mexico Territory, Utah Territory .
42
STATEICP
Pacific Division - Oregon Territory, California .
297
0 .8
37,105
100 .0
State of Enumeration (ICPSR)
H24-25 1
Connecticut
699
1 .9
2
Maine
1,034
2 .8
3
Massachusetts
2,154
5 .8
4
New Hampshire
662
1 .8
5
Rhode Island
281
6
Vermont
574
0 .8 1 .5
Codebook: Household Record
Page 56
11
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Delaware
149
0 .4
12
New Jersey
950
2 .6
13
New York
5,872
15 .8
14
Pennsylvania
4,177
11 .3
21
Illinois
1,547
4 .2
22
Indiana Michigan
1,704 725
4 .6
23 24
Ohio
3,438
9 .3
25
Wisconsin
606
1 .6
31
Iowa
332
0 .9
12
0 .0
1,149
3 .1
1,749
4 .7
33
Minnesota Territory
34
Missouri
40
Virginia
41
2 .0
Alabama
737
2 .0
42
Arkansas
276
0 .7
43
Florida
106
0 .3
44
Georgia
923
2 .5
45
Louisiana
626
1 .7
46
Mississippi
47
496
1 .3 2 .9
North Carolina
1,069
48
South Carolina
543
1 .5
49
Texas
284
0 .8
51
Kentucky
1,391
3 .7
52
Maryland
54
Tennessee
66
New Mexico Territory
67
Utah Territory
71
California
72 98
STATEFIPS
Oregon Territory District of Columbia
973
2 .6
1,316
3 .5
137
0 .4
22
0 .1
274
0 .7
23
0 .1
95
0 .3
37,105
100 .0
737
2 .0
276
0 .7
274
0 .7
State of Enumeration (FIPS)
H26-27 01
Alabama
04
Arkansas
05
California
09
Connecticut
10
Delaware
11
District of Columbia
12
Florida
13
Georgia
16
Illinois
18
Indiana
19
Iowa
21
Kentucky
22
Louisiana
23
Maine
24
Maryland
699
1 .9
149
0 .4 0 .3
95 106
0 .3
923
2 .5
1,547
4 .2
1,704
4 .6
332
0 .9
1,391
3 .7
626
1 .7
1,034
2 .8
973
2 .6
1850 Public Use Microdata Sample
Codebook: Household Record
User's Guide and Technical Documentation 25
Massachusetts
26
Michigan
27
Minnesota Territory
28
Mississippi
29
Missouri
33 34
New Hampshire
35
New Mexico Territory
36 37
Page 57 2,154 725
5 .8 2 .0
12
0 .0
496
1 .3
1,149
3 .1
662
1 .8
950
2 .6
137
0 .4
New York
5,872
15 .8
North Carolina
1,069
39
Ohio
3,438
2 .9
40
Oklahoma
41
Oregon Territory
1,749
42
New Jersey
9 .3 4 .7
23
0 .1
Pennsylvania
4,177
44
Rhode island
281
11 .3
45
South Carolina
543
47
Tennessee
48
Texas
49
Utah Territory
50
Vermont
51
Virginia
55
Wisconsin
CITY
0 .8 1 .5
1,316
3 .5
284
0 .8
22
0 .1
574 1,749
1 .5 4 .7
606
1 .6
37,105
100 .0
31,203
84 .1
91
0 .2
City Identifier
H28-31 0
Household not located in one of 98 largest cities
50
Albany, NY
90
Alexandria, VA
17
0 .0
110
Allegheny, PA
45
390
Auburn, NY
24
0 .1
430
Augusta, ME
530
Baltimore, MD
550
Bangor, ME
570
Bath, ME
810
Boston, MA
830
Bridgeport, CT
890
Buffalo, NY
930
Cambridge, MA
970
Camden, NY
8
0 .1 0 .0
363
1 .0
29
0 .1
13
0 .0
341
0 .9
19
0 .1
88
0 .2
32
0 .1
1030
Charlestown, MA
17
0 .0
42
1050 1190
Charleston, SC Chicago, IL
51
0 .1
1290
Cincinnati, OH
1330
Cleveland, OH
1450 1490
Columbus, OH Concord, NH
1530
Covington, KY
1210
Chicopee, MA
64
0 .1 0 .2
19
0 .1
222
0 .6
37 52 25 18
0 .1 0 .1 0 .1 0 .0
Codebook. Household Record Page 58
1850 Public Use Microdata Sample User's Guide and Technical Documentation
1610
Danvers, MA
1670
Dayton, OH
1750
Detroit, MI
1770
Dorchester, MA
1790
Dover, NH
20
2230
Fall River, MA
2510
Gloucester, MA
32
0 .1
2690
Harrisburg, PA
20
0 .1
2710
Hartford, CT
17
0 .0
28
2990
Indianapolis, IN
0 .1
3410
Lafayette, LA
3470
Lancaster, PA
3530
Lawrence, MA
3770 3790
10
0 .0
28
0 .1
36
0 .1
17
0 .0 0 .1
9
0 .0
34
0 .1
28
0 .1
19
0 .1
Louisville, KY
97
Lowell, MA
82
0 .3
3810
Lynchburg, VA
3830
Lynn, MA
12
0 .0
27
0 .1
3870
Madison, IN
16
0 .0
3930
Manchester, NH
26
4050
Memphis, TN
0 .1
4170
Milwaukee, WI
10
0 .0
52
0 .1
4210
Mobile, AL
24
0 .1
4290
Montgomery, AL
16
0 .0
4410
Nantucket, MA
13
4451
Nashville, TN
0 .0
4470
New Albany, IN
17
0 .0
14
0 .0
4490
New Bedford, MA
42
0 .1
4570
New Haven, CT
55
0 .1
4590
New London, CT
9
4610
New Orleans, LA
4652
Brooklyn, NY
186
0 .0
4653
New York, NY
4670
Newark, NJ
75
- 4730
Newburyport, MA
22
0 .1
4770
Newport, RI
18
0 .0
4850
Norfolk, VA
27
0 .1
4890
North Providence, RI
13
0 .0
4930
Norwich, CT
12
0 .0
5150
Oswego, NY
23
0 .1
5250
Paterson, NJ
29
0 .1
5350
Petersburg, VA
19
0 .1
5370
Philadelphia, PA
210
0 .6
5371
Kensington, PA
99
0 .3
5372
Mayamensing, PA
47
0 .1
5373
Northern Liberties, PA
84
0 .2
5374
Southwark, PA
80
0 .2
5375
Spring Garden, PA
101
0 .3
5410
Pittsburgh, PA
84
0 .2
5550
Portland, ME
46
0 .1
5590
Portsmouth, NH
17
0 .0
5630
Portsmouth, VA
16
0 .0
,
0 .2
0 .5
173
0 .5
1,027
2 .8 --
0 .2
1850 Public Use Microdata Sample
Codebook: Household Record
User's Guide and Technical Documentation
Page 59
5640
Pottsville, PA
12
0 .0
5670
Providence, RI
92
0 .2
5810
0 .1
Reading, PA
34
5890
Richmond, VA
42
0 .1
5950
Rochester, NY
75
0 .2
6030
Roxbury, MA
45
0 .1
6110
Saint Louis, MO
6170
Salem, MA
45
6390
Savannah, GA
18
214
0 .6 0 .1 0 .0
Schenectady, NY
12
0 .0
6570
Smithfield, RI
22
0 .1
6730
Springfield, MA
33
0 .1
6910
Syracuse, NY
45
6970
Taunton, MA
20
7090
Troy, NY
71
0 .2
7150
Utica, NY
37
0 .1
7270
Warwick, RI
16
0 .0
7290
Washington, DC
75
0 .2 ,
7291
Georgetown, DC
15
0 .0
7420
West Troy, NY
15
0 .0
7430
Wheeling, VA
28
0 .1
7530
Wilmington, DE
31
0 .1
7550
Wilmington, NC
12
0 .0
7610
Worcester, MA
45
0 .1
7690
Zanesville, OH
13
0 .0
7530
Wilmington, DE
6410
0 .1 .
0 .1
31
0 .1
37,105
100 .0
28,825
77 .7
Urban/Rural Status
URBAN H32 1
Rural
2
Urban
9
Missing
8,127
21 .9
153
0 .4
37,105
100 .0
City Population (in Hundreds)
CITYPOP H33-37 0
Less than 100 or Unincorporated
1
100-199
25,284 55
_
68 .1 0 .1
2
200-299
85
0 .2
5155
51500+ Missing
1,027 153
2 .8
9999
37,105
100 .0
0 .4
Codebook: Household Record
Page 60
COUNTY
1850 Public Use Microdata Sample User's Guide and Technical Documentation
County Code (See Appendix A)
H38-41
10-5100
36,931
99 .5
9998
Illegible
1
0 .0
9999
Missing
173
0 .5
37,105
100 .0
37,105
100 .0
37,105
100 .0
35,020
94 .4 1 .24
SEA
State Economic Area
H42-44
0-498
GQ
Group Quarters Residence
H45 1
Not group quarters
3
Group quarters in 1970 definition, but not 1850
463
4
Institution (IPUMS classification)
473
1 .3
5
Other group quarters
1,126
3 .03
6
Fragment
23
0.1
37,105
100.0
Group Quarters Code
GQTYPE
H46-48 0
Not available (not Group Quarters or missing)
95 .9
35,601
111
Prison
28
112
Penitentiary
43
0 .1
121
Jail
17
0 .0
140
Reformatory
4
0.0
150
Camp or chain gang
5
0.0
160
House of correction, workhouse
7
0.0
200
Mental institutions
42
0 .1
311
Aged, dependent home
5
0 .0
313
Old soldier's home
27
0 .1
332
Orphan's home, asylum
42
0 .1
341
Children's home
14
0.0
351
Deaf, blind school
1
0.0
352
Deaf, blind, epilepsy
11
0.0
381
Poor house, almshouse
190 .
0 .5
392
Homes for widows ; single, fallen women
395
Home, other dependent
_
0 .1
5
0.0
5
0 .0
500
Military
32
0 .1
501
U .S . army installation, fort
21
0 .1
502
Navy, marine installation
7
0 .0
503
Navy ships
11
0 .0
1850 Public Use Microdata Sample
Codebook: Household Record
User's Guide and Technical Documentation 600
College dormitory
601
Military service academies
701
Page 61 35
0 .1
2
0 .0
Hotel
389
1 .0
702
House, lodging apartment, boarding house
254
0 .7
810
Schools, boarding schools
38
812
Academy, institute
11
0 .1
820
Hospitals
33
0 .1
821
Hospital, charity
18
0 .0
822
Infirmary
4
0 .0
832
Convent
7
833
Monastery
4
0 .0
835
Seminary
836
Religious commune
837 843 844
Railroad
845
35
0 .1
Work boarding house
24
0 .1
847
Ships, boats
46
849
Other worksites
25
0 .1
870
Other group quarters
GQFUND
0 .0
0 .0
29
0 .1
21
0 .1
Other religious
2
Mining
7
0 .0
3
0 .0
0 .1 0 .0
37,105
100 .0
Group Quarters Funding Code
H49-50 0
Not available (not Group Quarters or missing)
35,601
95 .9
11
Federal support
92
13
State support
74
0 .2
16
County/City
0 .2
17
Other government
127
0 .3
21
Private
24 99
FARM
25
0 .1
805
2 .2
Religious
100
Not classifiable
0 .3
281
0 .8
37,105
100 .0
19,475
52 .5
Farm
H51 1
Non-Farm
2
Farm
17,630
47 .5
37,105
100 .0
Codebook: Household Record
Page 62
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Sample Unit
SAMPUNIT H52
35,170
94 .8
267
0 .7
46
0 .1
136
0 .4
1,458
3 .9
5 23
0 .0
37,105
100 .0
1
35,013
94 .4
2
1,564
4 .2
3
337
0 .9
4 5
115
0 .3
46
0 .1
18
0 .0
8
0 .0
3
0 .0
1
Dwelling size 30 or less
2
Dwelling size greater than 30
3
Individual in group quarters
4
Related group in group quarters
5
Primary individual, dwelling size unknown
6
Household, dwelling size unknown
7
Fragment
0 .1
Sequence of Household in Dwelling
HHSEQ H53
7 8 9
NUMPERHH
1
0 .0
37,105
100 .0
Number of Person Records in Household
H54-57 1
693
1 .9
2
3,373
9 .1
3
4,812
13 .0
4
5,212
14 .0
5
5,146
13 .9
6
4,648
12 .5
7
3,696
10 .0
8
2,861
7 .7
9
1,978
5 .3
10
1,295
3 .5
674
1 .8 1 .0
11 12 13 2016 9999
Missing
388 207
0 .6
38
0 .1
192
0 .5
37,105
100 .0
1850 Public Use Microdata Sample
Codebook: Household Record
User's Guide and Technical Documentation
Page 63
Microfilm Reel Number
REEL H58-61
Microfilm Page Number
PAGENO H62-64
SEQHH
Sequence in Dwelling of First Family Taken
H65-66
92 99
Missing
36,766
99 .1
1
0 .0
72
0 .2
37,105
100 .0
Side of Enumeration Form
SIDE H67
Number of Persons Taken in Dwelling
DWTAKE H68-69 1
2,067
2
5 .6
2,890
7 .8
3
4,224
11 .4
4
4,781
12 .9
5
4,828
6
4,519_
13 .0
7
10 .2
8
3,146
8 .5
9
2,219
10
1,549
6 .0 4 .2
11
919
2 .5
12
612
1 .6
30
15 37,105
ENUMDUR H70
ENUNIIVIO H71-72
12 .2
3,801
Duration of Enumeration
Month of Enumeration
0 .0 .
100 .0
Codebook: Household Record Page 64
ENUMD H73-74
Day of Enumeration
LINE H75-77
Line Number
1850 Public Use Microdata Sample User's Guide and Technical Documentation
1850 Public Use Microdata Sample
User's Guide and Technical Documentation
RECTYPE
Codebook: Person Record Page 65
Record Type Identifier
PI P
YEAR
Person Record Identifier
197,678
100 .0
197,678
100 .0
197,678
100 .0
197,678
100 .0
197,678
100 .0
197,678
100 .0
1850 Census Identifier
P2-3 85
SERIAL
1850 Census Year Identifier
Household Serial Number
P4-I1 1-37105
PERNUM
Household serial number
Sequence of Person in Household
P12-13 1
37,105
18 .8
2
34,890
3
31,278
17 .6
4
26,329
5
21,055
15 .8 13 .3 10 .7
6
15,944
8 .1
7 8
11,354
5 .7
9
4,838
10
2,889
1 .5
1,608
0 .8
921
0 .5
529
0 .3
11 12 13 14
7,677
326
3 .9 2 .4
0 .2
15 16
223
17
114
0 .1
92 72
0 .0
54
0 .0
46
0 .0
43
0 .0
18 19 20 21 22 23 24 25
167
0 .1 0 .1
0 .0
31
0 .0
21
0 .0
21
0 .0
Codebook: Person Record Page 66
1850 Public Use Microdata Sample User's Guide and Technical Documentation .
26
18
0 .0
13
0 .0
28
10
29
6
0 .0
30
4
27
04 .0 0 .0
197,678
100 .0
0
97,391
49 .3
1
7,511
2
87,385
MOMLOC
Position in Household of Own Mother
P14-15
25
3 .8 44 .2
2
0 .0
197,678
100 .0
0
94,495
47 .8
1
98,530
49 .8
2
2,079
1 .1
3
1,661
0 .8
4
273
0 .1
7
640
0 .3
197,678
100 .0
MOMRULE
Rule for Linking Mother
P16
POPLOC
Position in Household of Own Father
P17-18 0
102,268
51 .7
1
91,970
46 .5
2
809
0 .4
1
0 .0
197,678
100 .0
101,059
51 .1
1
93,424
47 .3
2 3
1,087
0 .5
1,276
0 .6
4
655
0 .3
7
177
0 .1
197,678
100 .0
28
Rule for Linking Father
POPRULE P19 0
1850 Public Use Microdata Sample
User's Guide and Technical Documentation
SPLOC
Codebook : Person Record Page 67
Position in Household of Own Spouse
P20-21 0
135,772
68 .7
1
29,052
14 .7
2
29,247
14 .8
3
710
0 .4
30
1
0 .0
197,678
100 .0
0
2,237 2,281
1 .1
1 2
2,363
1 .2
3
2,328
1 .2
4
2,414
1 .2
5
2,275
1 .2
6
2,134
7
2,259
1 .1
8
2,209
1 .1
9
1,955
1 .0
10
2,232
1 .1
11
1,905
1 .0
12
2,289
1 .2
13
2,058
1 .0
14
2,265
15
1,993 _
1 .1
16
2,257
1 .1
17
2,214
1 .1
18
2,289
1 .2 1 .0
ELDCH
Age of Eldest Own Child
P22-23
1 .2
1 .1
1 .0
19
2,056
20
2,076
1 .1
21
1,714
0 .9
22
1,658
0 .8
23
1,345
0 .7
24
1,090
0 .6
25
1,040
0 .5
26
776
0 .4
27
-619
0 .3
28
652
0 .3
29
436
0 .2
30
737
0 .4
31
282
0 .1
32
323
33
261
0 .2 0 .1
34
219
0 .1
Codebook: Person Record
Page 68
1850 Public Use Microdata Sample User's Guide and Technical Documentation
35
330
0 .2
36
205
0 .1
37
190
0 .1
38
171
0 .1
39
132
40
309
0 .2
41
85
0 .0
42
104
0 .1
43
91
0 .0
44
100
0 .1
45
146
0 .1
0 .1
73
1
99
137,948
69 .8
197,678
100 .0
0
9,758
4 .9
1
10,332
5 .2
2
7,605
3 .8
4,119
2 .1
YNGCH
0 .0
Age of Youngest Own Child
P24-25
3,027
1 .5
5
2,380
1 .2
6
2,068
1 .0
7
1,732
0 .9
8
1,682
0 .9
1,230
0 .6
10
1,427
0 .7
11
1,018
0 .5
12
1,228
0 .6
1,042
0 .5
1,007
0 .5
774
0 .4
895
0 .5
752
0 .4
733
0 .4
608 673
0 .3 0 .3
505
0 .3
530
0 .3
395
0 .2
329
0 .2
9
13 14 15 16 17 18 19 20 21 22 23 24
392
0 .2
266
0 .1
217
0 .1
220
0 .1
29
192
30
332
0 .1 0 .2
25 26 27 28
1850 Public Use Microdata Sample
Codebook: Person Record
User's Guide and Technical Documentation
Page 69
31
150
0 .1
32
149
33
0 .1
140
0 .1
34
135
0 .1
35
188
0 .1
36
128
37
111
0 .1
38
105
0 .1
39
92
0 .0
40
176
0 .1
41
61
0 .0
42
79
43
59
44
0 .0
69
0 .0
45
98
0 .0
0 .1
0 .0
73
1
99
137,948
69 .8
197,678
100 .0
1
12,949
6 .6
2
9,764
4 .9
3
16,783
8 .5
4
22,453
5
11 .4
6
25,901 26,347
13 .1
7
23,973
12 .1
NFAM
0 .0
Number of Own Family Members in Household
P26-27
13 .3
8
20,624
10 .4
9
15,678
10
7 .9
10,540
5 .3
11
6,303
3 .2
12
3,288
1 .7
13
1,664
14
0 .8
784
0 .4
345
0 .2
16
160
0 .1
17
85
0 .0
18
18
19
0 .0
19
0 .0
197,678
100 .0
15
Codebook: Person Record Page 70
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Number of Own Children in Household
NCHILD P28 0
137,948
69 .8
1
15,356
7 .8
2
11,732
3 4
9,519
5 .9 4 .8
7,621
3 .9
5
5,779
2 .9
6
4,079
2 .1
8
2,721
1 .4
1,601
0 .8
1,322
0 .7
197,678
100 .0
0
179,970
91 .0
1
9,676
4 .9
2
6,654
3 .4
3
1,290
0 .7
4
84
0 .0
4
0 .0
197,678
100 .0
35,945
18 .2
Number of Own Children Under Age 5 in Household
NCHLT5 P29
Imputed Relation to Head
IMPREL P30-31 1
Head
2
Wife
3
Child
4
Child-in-law
5
Parent
6
Parent-in-law
7
Sibling
8 9
Sibling-in-law Grandchild
10
Other relative
11
Non-relative Individual in Group Quarters
99
29,179
14 .8
99, 821 810
50 .5 0 .4
1,682
0 .9
1,180
0 .6
4,020
2 .0
2,427
1 .2.
3,297
1 .7
4,978
2 .5
12,947
6 .5
1,392
0 .7
197,678
100 .0
1850 Public Use 1Vlicrodata Sample User's Guide and Technical Documentation
AGE P32-34
Codebook: Person Record Page 71
Age in Years
0
5,271
2 .7
1
5,819
2 .9
2
6,091
3 .1
3
5,829
2 .9
4
5,994
3 .0
5
5,805
6
5,727
2 .9
7
5,358
2 .7
8 9
5,757
2 .9
4,742
2 .4
10
5,492
2 .8
11
4,369
2 .2
12
5,262
2 .7
13 14
4,479
2 .3
4,887
2 .5
15
4,187
2 .1
2 .9
16
4,587
17
4,304
2 .2
18
4,644
2 .3
19
3,898
2 .0
20
4,498
2 .3
21
3,734
1 .9
22
4,224
2 .1
23
3,864
2 .0
24
3,639
1 .8
25
4,337
2 .2
26
3,471
1 .8
27
2,886
1 .5
28
3,460
1 .8
2,265
1 .1
30
4,768
2 .4
31
1,912
1 .0
32
2,563
1 .3
29
2 .3
2,216
1 .1
34
2,083
1 .1
35
3,133
1 .6
36
2,044
37
1,899
38
2,149
1 .1
1,572
0 .8 1 .7
33
39 40
3,351
41 42
1,208 1,610
43 44
1,346 1,418
45
2,271
46
1,308
1 .0 .
1 .0
0 .6 0 .8 0 .7 0 .7 1 .1 0 .7
Codebook. Person Record
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Page 72 47
1,163
0 .6
48
1,338
0 .7
49
1,088
0 .6
50
2,458
1 .2
798
0 .4
1,120 789
0 .6 0 .4
51 52 53
843
0 .4
55
1,126
0 .6
56
838
0 .4
615
0 .3
684
0 .3
504
0 .3
1,348
0 .7
419
0 .2
555
0 .3
54
57 58 59 60 61 62 63 64
540 471
0 .3 0 .2
682
0 .3
439
0 .2
67
361
0 .2
68
351
0 .2
266
0 .1
529
0 .3
189
0 .1
261
0 .1
248
0 .1
211
0 .1
256
0 .1
161
0 .1
155
0 .1
139
0 .1
91
0 .0
171
0 .1
72
0 .0
81
0 .0
67
0 .0
66
0 .0
66
0 .0
33
0 .0
39
0 .0
23
0 .0
24
0 .0
36
0 .0
14
0 .0
12
0 .0
13
0 .0
7
0 .0
9 7
0 .0 0 .0
7
0 .0
65 66
69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97
1850 Public Use Microdata Sample
Codebook: Person Record
User's Guide and Technical Documentation
Page 73
98 99 100
3
0 .0
2
0 .0 0 .0
1
101
1
103
1
104
-
106 110
0 .0
1
0 .0
1
0 .0
2
0 .0 0 .0
998
Illegible
27
999
Missing
125
SEX
0 .0
0 .1
197,678
100 .0
101,259
51 .2
96,248
48 .7
2
0 .0
Sex
P35 1
Male
2
Female
8
Illegible
9
Missing/blank
RACE
169
0 .1
197,678
100 .0
190,126
96 .2
Race
P36-38 0
White (blank)
1
White
2
Black/Negro
3
Mulatto
7
Other race, not elsewhere classified
MARRINYR
3,202
1 .6
2,816
1 :4
1,525
0 .8
9
0 .0
197,678
100 .0
195,688
99 .0
Married Within Year
P39 1
No (blank)
2
Yes
BLIND
1,990
1 .0
197,678
100 .0
197,574
99 .9
Blind
P40 1
No (blank)
2
Yes
104
0 .1
197,678
100 .0
Codebook. Person Record Page 74
BPL
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Birthplace
P41-45 10100
Alabama
10200
Alaska
10500
Arkansas
10600
California
47
10800
Colorado
10900
Connecticut
13
0 .0
Delaware
3,910
2 .0
11000
967
0 .5
327
0 .2
3,254
1 .6
1
0 .0
680
0 .3 0 .0
11100
District of Columbia
11200
Florida
11300
Georgia
11500
Hawaii
8
11700
Illinois
3,843
11800
Indiana
5,787
Iowa
2 .9
11900
592
0 .3
12000
Kansas
1
0 .0
12100
Kentucky
8,411
12200
Louisiana
1,455
4 .3
12300
Maine
5,521
2 .8
12400
Maryland
5,363
2 .7
12500 12600
Massachusetts
9,092
Michigan
1,492
4 .6
12700
Minnesota
12800
Mississippi
1,544
0 .8
12900
Missouri
3,128
1 .6
13300
New Hampshire
3,702 4,932
1 .9
13400
New Jersey
13600
New York
13700
North Carolina
13900
Ohio
14100
Oregon
32
0 .0
14200
Pennsylvania
20,598
10 .4
14400
Rhode Island
1,349
0 .7
14500 14700
South Carolina
4,341
2 .2
Tennessee
8,257
4 .2
14800
Texas
422
0 .2
15000
Vermont
3,555
1 .8
15100
Virginia
11,747
5 .9
15500
Wisconsin
590
0 .3
16200
New Mexico Territory
469
0 .2
16300
Utah Territory
11
0 .0
16500
Indian Territory
5
0 .0
19900
United States
82
0 .0
30500
Canada
936
0 .5
30502
New Brunswick Newfoundland
115
0 .1
30503
8
0 .0
30504
Nova Scotia
155
0 .1
305 05
Ontario
21
0 .0
213 4,850
14
0 .1 2 .5 0 .0 1 .9
0 .7
0 .8 0 .0
2 .5
25,688
13 .0
8,008
4 .1
14,643
7 .4
1850 Public Use Microdata Sample
User's Guide and Technical Documentation 30506
30507 31000 31100 31200 31300 32000 32003 32004 32007 33000 33100 33200 33400 33500 34000 34100
34200 343 00 344 00 34700 34800 34900 35032 35040 35100 35200 35201 35202 35205 35208 35209
35220 35222 35224 35226 35300
Prince Edward Island Quebec/French Central America, not elsewhere classified Mexico Caribbean, not elsewhere classified Cuba South America, not elsewhere classified Brazil Chile Guyana Europe, not elsewhere classified Belgium France Netherlands Switzerland United Kingdom, not elsewhere classified England Scotland Wales Denmark Ireland Norway Sweden Bohemia-Moravia Poland Austria Germany, not elsewhere classified Bavaria Wurttemberg Mecklenburg Hessen Baden Saxony Prussia Hanover Hamburg Hungary
36100 36200
Greece
36300
Portugal
36400 36510 37002 37003 37100 37401 38000 39201 39901 39903 99700
Spain
Italy
Russia East Indies Southwest Asia China India Africa, not elsewhere classified Bermuda At sea Abroad Indeterminate
Codebook: Person Record Page 75 17 79 1
145 47 19 3
4 5 4 6
0.0 0.0
0 .0
0 .1 0 .0
0 .0 0 .0
0 .0 0 .0 0.0
0 .0
11
0 .0
116
0 .1
595 132 27 2,769 694
274 21
9,660 131 35 1
32 9 5,592 43 8 1
14 23 22-
104
13 1 1 1
25 18 27 7
2 1
7 5 5
0.3 0.1 0.0 1 .4 0.4 0.1
0 .0
4.9 011 0.0
0 .0
0.0 0.0 2.8 0.0
0 .0 0 .0
0 .0 0 .0 0 .0 0 .1
0.0
0 .0 0 .0 0 .0
0 .0 0 .0 0 .0
0 .0
0 .0
0 .0
0 .0 0 .0
0 .0
1
0 .0
1
0 .0
19 348
0 .0 0 .2
Codebook: Person Record
Page 76
998 00
Illegible
999 00
Blank
SCHOOL
1850 Public Use Microdata Sample User's Guide and Technical Documentation 45
0 .0
6,328
3 .2
197,678
100 .0
156,999
79 .4
School Attendance in the Past Year
P46 1
No, not in school
2
Yes, in school
LIT
40,679
20 .6
197,678
100 .0
56,303
28 .5
Literacy
P47 0
NIA, under age 21
1
Can read and can write
4
Can't read, writing unknown
130,848 10,527 197,678
OCC1880
66 .2 5 .3 100 .0
Occupational Classification, 1880 System
P48-50 AGRICULTURE 1
Agricultural laborers
3
Dairymen
2836
1 .2
5
0 .0
4
Farm and plantation overseers
5
Farmers and planters
6
Florists
7
Gardeners, nurserymen, and vinegrowers
8
Stock-drovers
16
Stock-herders
0 .0
9
9
0 .0
10
Stock-raisers
1
0 .0
11
Turpentine farmers and laborers
2
0 .0
5 4
0 .0
21
0 .0
19
0 .0
24,124
12 .2
1
0 .0
85
0 .0
PROFESSIONAL AND PERSONAL SERVICES 13
Actors
14
Architects
0 .0
15
Artists and teachers of art
16
Auctioneers
9
0 .0
17
Authors, lecturers, and literary persons
3
0 .0
18
Barbers and hairdressers
78
0 .0
19
Billiard and bowling saloon keeper and employees
4
0 .0
20
Boarding- and lodging-house keepers
51
0 .0
21
Chemists, assayers, and metallurgists
6
0 .0
22
Clergy
292
0 .1
23
Clerks and copyists
8
0 .0
24
Clerks in government offices
0 .0
Codebook: Person Record
1850 Public Use Microdata Sample
User's Guide and Technical Documentation 25
26 27 28 29 30 31
32 33 34 35
Clerks in hotels and restaurants Collectors and claim agents Dentists Designers, draughtsmen, and inventors Domestic servants Employees of charitable institutions Employees of government (not clerks) Employees of hotels and restaurants (not clerks) Engineers (civil) Hostlers Hotel keepers
36 38 39 40
Hunters, trappers, guides, and scouts
41
Lawyers
42
Journalists Laborers (not specified) Launders Livery-stable keepers Messengers
46
Nurses
47
Officers of the army and navy
48
Officials of government
53 54 56 57 58
1
12 20
Musicians (professional) and teachers of music
0.0
0.0 0.0
3
0.0
1
0.0
244 27 144
19 46 127
6
23
6,197
5
241
43 45
49 50 51 52
Page 77
0.1
0.0 0 .1
0 .0 0 .0 0 .1
0 .0
0 .0 4 .5 0.0 0 .1
19
0.0
7
0.0
34
0.0
8
0.0
12 168 428
0.0 0.1 0 .2
Restaurant keepers
8
0 .0
Sexton
3
0 .0
11
0 .0
5
0 .0
Physicians and surgeons
Showmen and employees of shows Soldiers, sailors, and marines (U .S . army and navy) Teachers and scientific persons Watchmen (private)
and detectives
Whitewashers Others in professional and personal services
74 342 27
0 .0 0 .2 0 .0
16
0.0
29 24
0.0
288 28
0 .0 0 .1 0 .0
3
0 .0'
TRADE AND TRANSPORTATION
59 60 61
62
63 64 65 66 69 70 71 72 73 74 75 76 77
Agents (not specified) Bankers and brokers Boatmen and watermen Bookkeepers and accountants in stores Brokers (commercial) Canal men Clerks in stores Clerks and bookkeepers in banks Clerks and bookkeepers in railroad offices Commercial travelers Draymen, hackmen, teamsters, etc . Employees in warehouses Employees of banks (not clerks)
20
1,014
7 2 2 384 2
0 .0 0 .5 0 .0 0.0 0.0 0.2 0.0
5
0.0
Employees of railroad companies
119
0 .1
Hucksters and peddlers
112
0 .1
13
0 .0
Employees of insurance companies (not clerks)
Milkmen
5
0.0
Codebook: Person Record
Page 78
1850 Public Use Microdata Sample User's Guide and Technical Documentation
78
Newspaper criers and carriers
6
79
Officials and employees of express companies (not
0.0
5
0.0
clerks) 80
Officials and employees of street railroad companies
4
0 .0
81
Officials and employees of telegraph companies
8
Officials and employees of trade and transportation
0.0
83
0.0
companies (not specified) 84
Officials of banks
8
85
Officials of insurance companies
3
0.0
86
Officials of railroad companies
3
0.0
87
Packers
3
0 .0
88
Pilots
26
0.0
89
Porters and laborers in stores and warehouses
16
0.0
90
Sailors
702
0.4
91
Salesmen
24
0.0
92
Saloon keepers and bartenders
133
0.1
93
Shippers and freighters
94
Steamboat men
95 96 97
Traders and dealers (not specified)
99
Traders and dealers in books and stationary
0.0
2
0.0
22
0.0
Stewards
12
0.0
Toll-gate and bridge keepers
20
0.0
1,183
0.6
5
0.0
16
0.0
6
0.0
64
0.0
100
Traders and dealers in boots and shoes
101
Traders and dealers in cabinet ware
102
Traders and dealers in cigars and tobacco
103
Traders and dealers in clothing and men's furnishings
48
0.0
104
Traders and dealers in coal and wood
22
0.0
105
Traders and dealers in cotton and wool
1
0.0
106
Traders and dealers in crockery, china, glass, and
5
0.0
stoneware 107
Traders and dealers in drugs and medicines
54
0.0
108
Traders and dealers in dry foods, fancy foods, and
16
0.0
231
0 .1
notions 110
Traders and dealers in groceries
Ill
Traders and dealers in hats, caps, and furs
2
0.0
112
Traders and dealers in ice
1
0 .0
113
Traders and dealers in iron, tin, and copperware
12
0.0
114
Traders and dealers in junk
2
0 .0
115
Traders and dealers in leather, hides, and skins
2
0 .0
116
Traders and dealers in liquors and wines
3
0 .0
117
Traders and dealers in livestock
2
0.0
118
Traders and dealers in lumber
18
'0 .0
119
Traders and dealers in marble, stone, and slate
1
0 .0
120
Traders and dealers in music and musical instruments
1
0.0
122
Traders and dealers in oils, paints, and turpentine
1
0 .0
123
Traders and dealers in paper and paper stock
124
Traders and dealers in produce and provisions
125 127
1
0.0
38
0.0
Traders and dealers in real estate
4
0.0
Undertakers
6
0.0
128
Weighers, gaugers, and measurers
9
0.0
129
Others in trade and transportation
0.0
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Codebook: Person Record
Page 79
MANUFACTURING, MECHANICAL, AND MINING INDUSTRIES Agricultural implement makers
18
0 .0
132
Apprentices to trades
43
0 .0
133
Bag makers
5
0 .0
134
Bakers
147
0 .1
135
Basket makers
136
Blacksmiths
137
Bleachers, dyers and scourers
138 139 140
Bone and ivory workers
141
Bookbinders and finishers
142
Boot and shoe makers Bottlers and mineral-water makers
130
143 144
19
0 .0
965
0 .5
34
0 .0
Blind, door and sash makers
17
0 .0
Boat makers
22 4
0 .0
Box factory operatives
0 .0
34
0 .0
1,476
0 .7
2
0 .0
9
0 .0
145
Brass founders and workers
23
0 .0
146
Brewers and maltsters
16
0 .0
147
Brick and tile makers Bridge builders and contractors
93
0 .0
1
0 .0
149
Britannia and japanned ware makers
8
0 .0
150
Broom and brush makers
30
0 .0
151
Builders and contractors (not specified)
152
Butchers
148
153
Button-factory operatives
154
Cabinet makers
155
Candle, soap, and tallow makers
156
Car makers
16
0 .0
190
0 .1
7
0 .0
379
0 .2
17
0 .0
3
0 .0
2,056
1 .0
157
Carpenters and joiners
158
Carpet makers
159
Carriage and wagon makers
160
Charcoal and lime burners
162
Chemical-works employees
163
Cigar makers
165
Clock and watch makers and repairers
32
0 .0
166
Confectioners
167
Coopers
168
Copper workers
170 171 172
15
0 .0
310
0 .2
9
0 .0
1
0 .0
36
0 .0
37
0 .0
404
0 .2
7
0 .0
Cotton-mill operatives
22
0 .0
Distillers and rectifiers
21
0 .0
Employees in manufacturing establishments (not
246
0 .1
173
specified) Engineers and firemen
121
0 .1
174
Engravers
18
0 .0
175
Fertilizer establishment operatives
1
0 .0
176
File makers, cutters, and grinders
7
0 .0
177
Fishermen and oystermen
126
0 .1
178
Fur workers
1
0 .0
179
Galloon, gimp, and tassel makers
0 .0
Codebook: Person Record
Page 80
180
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Gilders
6
0.0
182
Glass-works operatives
6
0.0
183
Glove makers
184
Gold and silver workers and jeweler
185
Gun- and lock-smiths
186
Hair cleaners, dressers, and workers
188
25
0.0
3
0.0
101
0.1
57
0.0
Harness and saddle makers
216
0.1
189
Hat and cap makers
112
0.1
190
Hosiery and knitting-mill operatives
191
Iron and steel works and shops operatives
192
4
0.0
204
0.1
Lace makers
1
0.0
194
Leather case and pocket-book makers
2
0.0
195
Leather curriers, dressers, finishers, and tanners
157
0.1
196
Lumbermen and raftsmen
72
0 .0
197
Machinists
229
0 .1
198
Manufacturers
199
0 .1
199
Marble and stone cutters
128
0.1
200
Masons (brick and stone)
505
0.3
201
Meat and fruit preserving establishment employees
1
0.0
202
Meat packers, curers, and picklers
203
Mechanics (not specified)
204
Mill and factory operatives (not specified)
205
Millers
206
Milliners, dressmakers, and seamstresses
207
Miners
1
0.0
193
0.1
57
0.0
315
0.2
30
0 .0
852
0.4
208
Mirror and picture-frame makers
5
0 .0
209
Nail makers
12
0 .0
210
Officials of manufacturing and mining companies
19
0 .0
212
Oil-well operatives and laborers
2
0 .0
213
Organ makers
2
0.0
214
Painters and varnishers
231
0.1
6
0.0
215
Paperhangers
216
Paper-mill operatives
34
217
Pattern makers
16
0 .0
7
0 .0
-
0.0
218
Photographers
219
Pianoforte makers and tuners
19
0.0
220
Plasterers
94
0 .0
221
Plumbers and gasfitters
16
0.0
222
Potters
223
Printers, lithographers, and sterotypers
224
Print-works operatives
25
0 .0
174
0. i
6
0.0
1
0.0
225
Publishers of books, maps, and newspapers
226
Pump makers
18
0.0
227
Quarrymen
20
0.0
229
Rag pickers
1
0.0
230
Railroad builders and contractors
8
0 .0
231
Roofers and slaters
l
0 .0
232
Rope and cordage makers
26
0.0
233
Rubber factory operatives
4
0 .0
234
Sail and awning makers
24
0.0
235
Salt makers
7
0.0
1850 Public Use Microdata Sample
Codebook: Person Record
User's Guide and Technical Documentation 236
Saw- and planing-mill operatives
237
Sawyers
238
Page 81 6
0 .0
97
0 .0
Scale and rule makers
1
242
9
0.0
Shingle and lath makers
243
Ship carpenters, caulkers, riggers, and smiths
244
Shirt, cuff, and collar makers
245
5
0.0
Silk-mill operatives
247
3
0.0
Stave, shook, and heading makers
8
0 .0
248
Steam-boiler makers
20
249
2
0 .0
Stove, furnace, and grate makers
251
Sugar makers and refiners
1
252
Tailors
253
Thread makers
254
Tinners and tinware makers
255
Tool and cutlery makers
256
139
567
0 .0 0 .1
0 .0 0.0
0 .3
50
0.0
105
0 .1
41
0.0
Trunk, valise, and carpet-bag makers
8
0 .0
257
Tobacco-factory operatives
4
0 .0
258
Umbrella and parasol makers
259
3
0 .0
Upholsterers
24
0 .0
260
Wheelwrights
128
261
0 .1
Wire makers and workers
14
262
0.0
Wood choppers
263
9
0 .0
Wood turners, carvers, and woodenware makers
264
44
0 .0
Woolen-mill operatives
265
Others in manufacturing, mechanical and mining
31
0 .0
218
0 .1
13
0 .0
industries
266
Employed, occupation unspecified NON-OCCUPATIONAL RESPONSE
302
Housewife/housework
304
13
0 .0
Student
305
461
0 .2
Retired
1,392 -
0 .7
306
None or pauper
44
307
0 .0
Sick, disabled or dead
308
25
0.0
Prisoners or institutional inmates
309
13
0 .0
Gentlemen or lady
42
997
0 .0
Unclassifiable
998
Illegible
999
Blank
152 13
0 .1 0.0
141,986
71 .8
197,678
100 .0
Codebook: Person Record Page 82
OCC1950
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Occupational Classification, 1950 System
P51-53 PROFESSIONAL, TECHNICAL, AND KINDRED WORKERS 0
Accountants and Auditors
7
0.0
1
Actors and actresses
5
0.0
3
Architects
4
0.0
4
Artists and art teachers
21
0 .0
5
Athletes
2
0.0
6
Authors
1
0.0
7
Chemists
8
0.0
290
0.1
1
0.0
9
Clergymen
10
College presidents and deans
18
Professors and instructors, mathematics
1
0.0
28
Professors and instructors, non-scientific subjects
3
0 .0
29
Professors and instructors, subject not specified
8
0 .0
31
Dancers and dancing
1
0 .0
32
Dentists
20
0.0
33
Designers
2
0 .0
35
Draftsmen
1
0 .0
36
Editors and reporters
23
0 .0
43
Engineers, civil
6
0 .0
46
Engineers, mechanical
1
0 .0,
51
Entertainers (not elsewhere classified)
9
0 .0
53
Foresters and conservationists
1
0 .0
54
Funeral directors and embalmers
6
0 .0
55
Lawyers and judges
241
0 .1
57
Musicians and music teachers
33
0.0
69
Miscellaneous natural scientists
73
Pharmacists
74
Photographers
75
Physicians and surgeons
78
Religious workers
92
Surveyors
93
Teachers (nec)
99
Professional, technical and kindred workers (nec)
1 54
0 .0 -
0 .0
7
0.0
428
0.2
1
0.0
12
0.0
328
0.2
12
0.0
24,135
12 .2
7
0.0
FARMERS AND FARM MANAGERS 100
Farmers (owners and tenants)
123
Farm managers MANAGERS, OFFICIALS, AND PROPRIETORS, EXCEPT FARM
201
Buyers and shippers, farm products
4
0 .0
203
Conductors, railroad
4
0.0
210
Inspectors, public administration
11
0.0
1850 Public Use Microdata Sample
User's Guide and Technical Documentation 230 240 250 270 290
Managers and superintendents Officers, pilots, pursers, and engineers, ship Officials and administrators (nee), public administration Postmasters Managers, officials, and proprietors (nee)
Codebook: Person Record Page 83
22 77 76
0 .0 0 .0 0 .0
19
0 .0
2,192
1 .1
CLERICAL AND KINDRED WORKERS
300 302
Agents (nee)
304
Baggagemen, transportation
305 310 320 321 335 340 342 360 365 380 390
Attendants, physician's and dentist's office Bank tellers Bookkeepers Cashiers Collectors, bill and account Mail carriers Messengers and office boys Shipping and receiving clerks Telegraph messengers Telegraph operators Ticket, station, and express agents Clerical and kindred workers (nee)
27 1
8 4
22 1
12
8
0.0 0.0
0.0 0.0 0 .0
0.0
0 .0
0.0
6
0.0
1
0 .0
5
0 .0
3
13
0.0
28
0 .0 0 .0
8 112
0 .0 0 .1
6
0 .0
SALES WORKERS
410 430 450 460 470 480 490
Auctioneers Hucksters and peddlers Insurance agents and brokers Newsboys Real estate agents and brokers Stock and bond salesmen Salesmen and sales clerks (nee)
5 4
0 .0 0 .0
1
0 .0
1,042
0 .5
147
0.1
CRAFTSMEN, FOREMEN, AND KINDRED WORKERS 500
501 502 503 504 505
510 511 512 521 522 523 524 525
Bakers Blacksmiths Bookbinders Boilermakers Brickmasons, stonemasons, and tile setters Cabinetmakers Carpenters Cement and concrete finishers Compositors and typesetters Engravers, except photoengravers Excavating, grading, and road machinery operators
Foremen (nee)
Foreman and hammerman Furriers
965
34 20 505 380 2,185 1
163 18
14
24 10 2
0.5
0.0 0.0 0.3 0.2 1 .1 0.0
0.1 0.0
0.0
0.0
0.0 0.0
Codebook: Person Record Page 84
1850 Public Use Microdata Sample User's Guide and Technical Documentation
532
Inspectors, scalers, and graders, log and lumber .
533
1
0.0
Inspectors (nec)
534
5
Jewelers, watchmakers, goldsmiths, and silversmiths
0 .0
541
Locomotive engineers
118
0.1
5
0 .0
544
Machinists
553
Mechanics and repairmen, railroad and car shop
554
1
0 .0
Mechanics and repairmen (nec)
555
291
Millers, grain, flour, feed, etc.
315
0 .1
560
Millwrights
91
561
0 .0
Molders, metal
89
563
0 .0
Opticians, lens grinders and polishers
564
Painters, construction and maintenance
565
Paperhangers
570
Pattern and model makers, except paper
571
Photoengravers and lithographers
573
233
0 .1
0 .2
2
0.0
213
0.1
6
0.0
16
0 .0
8
0.0
Plasterers
94
0 .0
574
Plumbers and pipe fitters
16
0.0
575
Pressmen and plate printers, printing
1
580
0.0
Rollers and roll hands, metal
10
0.0
581
Roofers and slaters
582
Shoemakers and repairers, except factory
583
Stationary engineers
584
Stone cutters and stone carvers
590
Tailors
567
0 .3
591
Tinsmiths, coppersmiths, and sheet metal workers
112
0.1
592
Tool makers, and die makers and setters
6
593
0 .0
Upholsterers
594
Craftsmen and kindred workers (nec)
595
Members of the armed services
1
0.0
1,447
0 .7
104
0.1
112
0.1
24
0 .0
479
0 .2
86
0 .0
OPERATIVES AND KINDRED WORKERS
602
Apprentice carpenters
4
0.0
611
Apprentices, building trades (nec)
2
0 .0
614
Apprentices, other specified trades
10
0.0
615
Apprentices, trade not specified
24
0 .0
623
Boatmen, canalmen, and lock keepers
284
0 .1
624
Brakemen, railroad
` 5
0 .0
625
Bus drivers
43
0 .0
632
Deliverymen and routemen
13
633
23
0 .0
Dressmakers and seamstresses, except factory
634
Dyers
23
0 .0 "0 .0
635
Filers, grinders, and polishers, metal
3
0 .0
641
Furnacemen, smeltermen and pourers
97
642
0 .0
Heaters, metal
1
0 .0
643
Laundry and dry cleaning operatives
3
0.0
644
Meat cutters, except slaughter and packing houses
190
645
0 .1
Milliners
650
Mine operatives and laborers
661
Motormen, street, subway, and elevated railway
670
Painters, except construction/maintenance
7
0.0
869
0 .4
1
0.0
25
0 .0
1850 Public Use Microdata Sample
User's Guide and Technical Documentation 673
Sailors and deck hands
674
Sawyers
675
Spinners, textile
680
Stationary firemen
681
Switchmen, railroad
682
Taxicab drivers and chauffeurs
683
Truck and tractor drivers
684
Weavers, textile
685
Welders and flame cutters
690
Operative and kindred workers (nec)
700
Housekeepers, private household
710
Laundry workers, private household
Codebook: Person Record
Page 85
694 97
0 .4 0 .0
56
0 .0
17
0 .0
1
0 .0
12
0 .0
338
0 .2
169
0 .1
1 1,833
0 .0 0 .9
3
0 .0
3
0 .0
236
0 .1
2
0 .0
3
0 .0
SERVICE WORKERS, EXCEPT PRIVATE HOUSEHOLD 720
Private household workers (nec)
730
Attendants, hospital and other institution
732
Attendants, recreation and amusement
740
Barbers, beauticians, and manicurists ,
750
78 .
0 .0
Bartenders
752
56
Boarding and lodging house keepers
763
Guards, watchmen, and doorkeepers
29
0 .0
764
Housekeepers and stewards, except private
32
0 .0
households 770
Janitors and sextons
771
Marshals and constables
773
Policemen and detectives
780
Porters
781
Practical nurses
782
Sheriffs and bailiffs
784
Waiters and waitresses
785
Watchmen (crossing) and bridge tenders
790
Service workers, except private household, (nec)
14
0 .0
0 .0
2
0 .0
34
0 .0
29
0 .0
61
0 .0
8
0 .0
17
0 .0
74
0 .0
17
0 .0
23
0 .0
FARM LABORERS AND FOREMEN 810
Farm foreman
820
Farm laborers, wage
162 162
0 .1 0 .1
LABORERS, EXCEPT FARM AND MINE 910
Fishermen and oystermen
930
Gardeners, except farm, and groundskeepers Longshoremen and stevedores
940 950 970
Lumbermen, raftsmen, and woodchoppers Laborers (nec)
126
0 .1
86 13
0 .0
81 9,005
0 .0 0 .0 4 .6
Codebook: Person Record Page 86
1850 Public Use Microdata Sample User's Guide and Technical Documentation
NON-OCCUPATIONAL RESPONSE 975
Employed, unclassifiable
980
House work, keeping house
983
At school
984
Retired
11
985
None, without occupation
44
986
Invalid, sick, disabled
987
Institutional inmate, prisoner
25 13
0 .0
991
Capitalist, gentleman
42
0 .0
995
Other non-occupation
132
0 .1
996
Unclassifiable
997
Occupation missing, unknown
998
Illegible
13
0 .0
13
0 .0
461
0 .2 0 .0 0 .0 0 .0
21
0 .0
143,366
72 .5
13
0 .0
197,678
100 .0
0
144,154
72 .9
3
5
0 .0
4
0 .0
6
3 236
7
32
0 .0
8
3
0 .0
9
162
0 .1
11
191
0 .1\
12
105
0 .1
13
112
0 .1
14
24,135
12 .2
15
16
0 .0
16
130
0 .1
17
183
0 .1
18
132
0 .1
19
97
0 .0
10,520
5 .3
Income Score
SCORE P54-55
20
0 .1
21
26
0 .0
22
34 3,074
0 .0 1 .6
24
4,427
2 .2
25
1,805 1,036
0 .9 0 .5
23
26 27 28
467 377
0 .2 0 .2
29
911
30
666
31
42
0 .3 0 .0
32
872
0 .4
33
52
0 .0
0 .5
1850 Public Use Microdata Sample
Codebook: Person Record
User's Guide and Technical Documentation
Page 87
34
137
0 .1
35
17
0 .0
36
382
0 .2
37
17
0 .0
38
34
0 .0
39
23
0 .0
40
63
0 .0
41
14
0 .0
42
2,269
1 .1
43
4
0 .0
46
12
0 .0
47
8
54
4
0 .0
62
241
63
20
0 .0
80
428
0 .2
197,678
100 .0
177,481
89 .8
0 .0 0 .1
Value of Real Property Owned
REALPROP P56-61
0 1
1
0 .0
2
0
0 .0
3
0 -
0 .0
4
0
0 .0
5
1
0 .0
708,000
1
0 .0
197,678
100 .0
197,534
99 .9
120
0 .1
22
0 .0
DEAF
Deaf and Dumb
P62 1
No (blank)
2
Yes
3
Dumb not deaf
4
Deaf not dumb
IDIOTIC
2
0 .0
197,678
100 .0
197,502
99 .9
Idiotic
P63 0
No (blank)
1
Yes
176
0 .1
197,678
100 .0
Codebook . Person Record Page 88
1850 Public Use Microdata Sample User's Guide and Technical Documentation
Insane
INSANE P64 0
No (blank)
1
Yes
197,538
99 .9
140
0 .1
197,678
100 .0
197,279
99 .8
399
0 .2
197,678
100 .0
170,032
86 .0
17,107
8 .7
5,092
2 .6
4
2,047
1 .0
5
1,023
0 .5
589
0 .3
1
0 .0
Pauper
PAUPER P65 0 1
SURSIM
No (Blank) Yes
Surname Similarity
P66-67 1
1st Surname Encountered
2 3
24 99
AGEMO
Blank
69
0 .0
197,678
100 .0
192,412
97 .3
651
0 .3
479
0 .2
615
0 .3
538
0 .3
469
0 .2
756
0 .4 0 .2
Age in Months
P68-69
1 2 3 4 5 6 7 8 9 10 11 12
369 455
0 .2
395
0 .2
326
0 .2
212
0 .1
1
0 .0
197,678
100 .0
1850 Public Use Microdata Sample
User's Guide and Technical Documentation
CRIME
Codebook: Person Record
Page 89
Convicted of Crime
P 70
FNAME
1
Drunk or Disorderly
2
Theft/Burglary/Larceny
3
Assault
4
Rape
5
Murder/Manslaughter
6
6
Miscellaneous
1
7
Convict/in jail
8
Unknown
10
9
Blank
Forename (First Name)
P71-86 LNAME P87-102
Surname (Last Name)
28
0 .0
49
0 .0
10
0 .0
1
0 :0 0 .0 0 .0 0 .0
1
0 .0
197,572
99 .9
197,678
100 .0
Appendix A: County Codes by State Page 90
1850 PUBLIC USE SAMPLE COUNTY CODES BY STATE (ICPSR System) ALABAMA-STATE CODE 41 10 AUTAUGA 30 BALDWIN 50 BARBOUR 70 BIBB ,90 BLOUNT 110 BULLOCK 13,0 BUTLER 150 CALHOUN/BENTON 190 2-10 230 250 270 290 310 330 3-SO 370 390 410 430 450 470 490 510 530 S50 570 590 610 630 650 670 710 730 750 770 790 810 830 850 870 890 910 930 950 970 990 1010
CHEROKEE CHILTON/BAKER CHOCTAW CLARKE CLAY CLEBURNE COFFEE COLBERT 'CONECUH COOSA COVINGTON CRENSHAW CULLMAN DALE DALLAS DE KALB ELMORE ESCAMBIA ETOWAH FAYETTE FRANKLIN GENEVA GREENE HALE HENRY JACKSON JEFFERSON LAMAR/SANFORD LAUDERDALE LAWRENCE LEE LIMESTONE LOWNDES MACON MADISON MARENGO MARION MARSHALL MOBILE MONROE MONTGOMERY
1850 Public Use Microdata Sample User's Guide and Technical Documentation
1030 1050 1070 1090 1110 1130 1170 1150 1190 1210 1230 1250 1270 1290 1310 1330
MORGAN/COTACO PERRY PICKENS PIKE RANDOLPH RUSSELL SHELBY ST CLARR' SUMTER TALLADEGA TALLAPOOSA TUSCALOOSA WALKER WASHINGTON WILCOX WINSTON/HANCOCK
ARKANSAS-STATE CODE 42 10 ARKANSAS 30 ASHLEY 50 BAXTER 70 BENTON 90 BOONE' 110 BRADLEY 130 CALHOUN 150 CARROLL 170 CHICOT 190 CLARK 210 CLAY 270 COLUMBIA 290 CONWAY 310 CRAIGHEAD 330 CRAWFORD 350 CRITTENDEN -370 CROSS 390 DALLAS 410 DESHA 415 DORSEY 430 DREW 450 FAULKNER 470 FRANKLIN 490 FULTON S10 GARLAND S30 GRANT 550 GREENE 570 HEMPSTEAD 590 HOT SPRING 610 HOWARD 630 INDEPENDENCE 650 I ZARD 670 JACKSON 690 JEFFERSON 710 JOHNSON 730 LAFAYETTE 750 LAWRENCE
1854 Public Use Microdata Sample User's Guide and Technical Documentation
770 790 810 830 850 870 890 910 930 950 970 990 1010 1030 1050 1070 1090 1110 1130 1150 1170 1190 1210 1250 1270 1290 1310 1330 1350 1230 1370 1390 1410 1430 1450 1470 1490
LEE LINCOLN LITTLE RIVER LOGAN LONOKE MADISON MARION MILLER MISSISSIPPI MONROE MONTGOMERY NEVADA NEWTON OUACHITA PERRY PHILLIPS PIKE POINSETT POLK POPE PRAIRIE PULASKI RANDOLPH SALINE SCOTT SEARCY SEBASTIAN SEVIER SHARP ST FRANCIS STONE UNION VAN BUREN WASHINGTON WHITE WOODRUFF YELL
CALIFORNIA-STATE CODE 71 10 ALAMEDA 30 ALPINE 50 AMADOR 70 BUTTE 90 CALAVERAS 110 COLUSA 130 CONTRA COSTA 150 DEL NORTE 170 EL DORADO 190 FRESNO 230 HUMBOLDT 270 INYO 290 KERN 330 LAKE 350 LASSEN 370 LOS ANGELES
Appendix: County Codes by State (ICPSR Coding) Page 91
410 430 450 470 490 510 530 550 570 610 630 670 690 710 730 750 770 790 810 830 850 870 890 910 930 950 970 990 1010 1030 1050 1070 1090 1110 1130 1150
MARIN MARIPOSA MENDOCINO MERCED MODOC MONO MONTEREY NAPA NEVADA PLACER PLUMAS SACRAMENTO SAN BENITO SAN BERNARDINO SAN DIEGO SAN FRANCISCO SAN JOAQUIN SAN LUIS OBISPO SAN MATEO SANTA BARBARA SANTA CLARA SANTA CRUZ SHASTA SIERRA SISKIYOU SOLANO SONOMA STANISLAUS SUTTER TEHAMA TRINITY TULARE TUOLUMNE VENTURA YOLO YUBA
CONNECTICUT-STATE CODE 01 10 FAIRFIELD 30 HARTFORD 50 LITCHFIELD 70 MIDDLESEX 90 NEWHAVEN 110 NEW LONDON 130 TOLLAND 150 WINDHAM DELAWARE-STATE CODE 11 10 KENT 30 NEW CASTLE 50 SUSSEX FLORIDA-STATE CODE 43 10 ALACHUA 30 BAKER
Appendix A: County Codes by State Page 92
70 90 130 190 230 250 310 330 370 390 470 530 570 590 630 650 670 730 750 770 790 810 830 870 890 950 1050 1070 1130 1090 1190 1210 1230 1270 1290 1310 1330
BRADFORD BREVARD/ST LUCIE CALHOUN CLAY COLUMBIA DADE DUVAL ESCAMBIA FRANKLIN GADSDEN HAMILTON HERNANDO/BENTON HILLSBOROUGH HOLMES JACKSON JEFFERSON LAFAYETTE LEON LEVY LIBERTY MADISON MANATEE MARION MONROE NASSAU ORANGE/MOSQUITO POLK PUTNAM SANTA ROSA ST JOHNS SUMTER SUWANNEE TAYLOR VOLUSIA WAKULLA WALTON WASHINGTON
GEORGIA-STATE CODE 44 10 APPLING 70 BAKER 90 BALDWIN 110 BANKS 150 BARTOW/CASS 190 BERRIEN 210 DIED 270 BROOKS 290 BRYAN 310 BULLOCH 330 BURKE 350 BUTTS 370 CALHOUN 390 CAMDEN 410 CAMPBELL 450 CARROLL
1850 Public Use Microdata Sample User's Guide and Technical Documentation
470 490 510 530 550 570 590 610 630 650 670 690 710 730 770 790 830 850 890 870 910 930 950 970 990 1010 1030 1050 1070 1110 1130 1150 1170 1190 .1210 1230 1250 1270 1290 1330 1350 1370 1390 1410 1430 1450 1470 1490 1510 1530 1550 1510 1590 1630 1670
CATOOSA CHARLTON CHATHAM CHATTAHOOCHEE CHATTOOGA CHEROKEE CLARKE CLAY CLAYTON CLINCH COBB COFFEE COLQUITT COLUMBIA COWETA CRAWFORD DADE DAWSON DE KALE DECATUR DODGE DOOLY DOUGHERTY DOUGLAS EARLY ECHOLS EFFINGHAM ELBERT EMANUEL FANNIN FAYETTE FLOYD FORSYTH FRANKLIN FULTON GILMER GLASCOCK GLYNN GORDON GREENE GWINNETT HABERSHAM HALL HANCOCK HARALSON HARRIS HART HEARD HENRY HOUSTON IRWIN JACKSON JASPER JEFFERSON JOHNSON
1850 Public Use Microdata Sample User's Guide and Technical Documentation 1690
1750 1770 1790 1810 1850 1870 1930 1950 1970 1890 1910 1990 2010 2030 2050 2070 2090 2110 2130 2150 2170 2190 2210 2230 2270 2290 2310 2330 2350 2370 2390 2410 2430 2450 2470 2490 2510 2550 2590 2610 2630 2650 2670 2690 2710 2730 2750 2810 2850 2890 2910 2930 2950 2970
JONES LAURENS LEE LIBERTY LINCOLN LOWNDES LUMPKIN MACON MADISON MARION MCDUFFIE MCINTOSH MERIWETHER MILLER MILTON MITCHELL MONROE MONTGOMERY MORGAN MURRAY MUSCOGEE NEWTON OCONEE OGLETHORPE PAULDING PICKENS PIERCE PIKE POLK PULASKI PUTNAM QUITMAN RA13UN RANDOLPH RICHMOND ROCKDALE SCHLEY SCREVEN SPALDING STEWART SUMTER TALBOT TALIAFERRO TATTNALL TAYLOR TELFAIR TERRELL THOMAS TOWNS TROUP TWIGGS UNION UPSON WALKER WALTON
Appendix : County Codes by State (ICPSR Coding) Page 93
2990 3010 3030 3050 3070 3110 3130 3150 3170 3190 3210
WARE WARREN WASHINGTON WAYNE WE13STER WHITE WHITFIELD WILCOX WILKES WILKINSON WORTH
ILLINOIS-STATE CODE 21 10 ADAMS 30 ALEXANDER 50. BOND 70 BOONE 90 BROWN 110 BUREAU 130 CALHOUN 150 CARROLL 170 CASS 190 CHAMPAIGN 210 CHRISTIAN 230 CLARK 250 CLAY 270 CLINTON 290 COLES 310 COOK 330 CRAWFORD 350 CUMBERLAND 370 DE KALB 390 DE WITT 410 DOUGLAS 430 DU PAGE 450 EDGAR 470 EDWARDS 490 EFFINGHAM 510 FAYETTE 530 FORD 550 FRANKLIN 570 FULTON 590 GALLATIN 610 GREENE 630 GRUNDY 650 HAMILTON 670 HANCOCK 690 HARDIN 710 HENDERSON 730 HENRY 750 IROQUOIS 770 JACKSON 790 JASPER 810 JEFFERSON 830 JERSEY
Appendix A: County Codes by State Page 94 850 870
890 910 930 950 990 970 1010 1030 1050 1070 1150 1170 1190 1210 1230 1250 1270 1090 1110 1130 1290 1310 1330 1350 1370 1390 1410 1430 1450 1470 1490 1510 1530 1550 1570 1590 1610 1650 1670 169'0 1710 1730 1630 1750 1770 1790 1810 1830 1850 1870 1890 1910 1930
JO DAVIESS JOHNSON KANE KANKAKEE KENDALL KNOX LA SALLE LAKE LAWRENCE LEE LIVINGSTON LOGAN MACON MACOUPIN MADISON MARION MARSHALL MASON MASSAC MCDONOUGH MCHENRY MCLEAN MENARD MERCER MONROE MONTGOMERY MORGAN MOULTRIE OGLE PEORIA PERRY PIATT PIKE POPE PULASKI PUTNAM RANDOLPH RICHLAND ROCK ISLAND SALINE SANGAMON SCHUYLER SCOTT SHELBY ST CLARR STARK STEPHENSON TAZEWELL UNION VERMILION WABASH WARREN WASHINGTON WAYNE WHITE
1850 Public Use Microdata Sample User's Guide and Technical Documentation
1950 1970 1990 2010 2030
-
WHITESIDE WILL WILLIAMSON WINNEBAGO WOODFORD
INDIANA-STATE CODE 22 10 ADAMS 30 ALLEN 50 BARTHOLOMEW 70 BENTON 90 BLACKFORD 110 BOONE 130 BROWN 150 CARROLL 170 CASS 190 CLARK 210 CLAY 230 CLINTON 250 CRAWFORD 270 DAVIESS 330 DE KALB 290 DEARBORN 310 DECATUR 350 DELAWARE 370 DUBOIS 390 ELKHART 410 FAYETTE 430 FLOYD 450 FOUNTAIN 470 FRANKLIN 490 FULTON 510 GIBSON 530 GRANT 550 GREENE 570 HAMILTON 590 HANCOCK 610 HARRISON 630 HENDRICKS 650 HENRY 670 HOWARD 690 HUNTINGTON 710 730 750 770 790 810 830 850 910 870 890 930
JACKSON JASPER JAY JEFFERSON JENNINGS JOHNSON KNOX KOSCIUSKO LA PORTE LAGRANGE LAKE LAWRENCE
1850 Public Use Microdata Sample
User's Guide and Technical Documentation 950
970 990 1010 1030 1050 1070 1090 1110 1130 1150 1170 1190 1210 1230 1250 1270 1290 1310 1330 1350 1370 1390 1430 1450 1470 1410 1490 1510 1530 1550 1570 1590 1610 1630 1650 1670 1690 1710 1730 1750 1770 1790 1810 1830
MADISON MARION MARSHALL MARTIN MIAMI MONROE MONTGOMERY MORGAN NEWTON NOBLE OHIO ORANGE OWEN PARKE PERRY PIKE PORTER POSEY PULASKI PUTNAM RANDOLPH RIPLEY RUSH SCOTT SHELBY SPENCER ST JOSEPH STARKE STEUBEN SULLIVAN SWITZERLAND TIPPECANOE TIPTON UNION VANDERBURGH VERMILLION VIGO WABASH WARREN WARRICK WASHINGTON WAYNE WELLS WHITE WHITLEY
IOWA-STATE CODE 31 10 ADAIR 30 ADAMS 50 ALLAMAKEE 70 APPANOOSE 90 AUDUBON 110 BENTON 130 BLACK HAWK 150 BOONE
Appendix: County Codes by State (ICPSR Coding)' Page 95
170 190 210 230 250 270 290 310 330 350 370 390 410 430 450 470 490 510 530 550 570 590 610 630 650 670 690 710 730 750 770 790 810 830 850 870 890 910 930 950 970 990 1010 1030 1050 1070 1090 1110 1130 1150 1170 1190 1210 1230 1250
BREMER BUCHANAN BUENA VISTA BUTLER CALHOUN CARROLL CASS CEDAR CERRO GORDO CHEROKEE CHICKASAW CLARKE CLAY CLAYTON CLINTON CRAWFORD DALLAS DAVIS DECATUR DELAWARE DES MOINES DICKINSON DUBUQUE EMMET FAYETTE FLOYD FRANKLIN FREMONT GREENE GRUNDY GUTHRIE HAMILTON HANCOCK HARDIN HARRISON HENRY HOWARD HUMBOLDT IDA IOWA JACKSON JASPER JEFFERSON JOHNSON JONES KEOKUK KOSSUTH LEE LINN LOUISA LUCAS LYON/BUNCOMBE MADISON MAHASKA MARION
Appendix A: County Codes by State Page 96
1270 1290 1310 1330 1350 1370 1390 1410 1430 1450 1470 1490 1510 1530 1550 1570 1590 1610 1630 1650 1670 1690 1710 1730 1750 1770 1790 1810 1830 1850 1870 1890 1910 1930 1950 1970
MARSHALL MILLS MITCHELL MONONA MONROE MONTGOMERY MUSCATINE 0 BRIEN OSCEOLA PAGE PALO ALTO PLYMOUTH POCAHONTAS POLK POTTAWATTAMIE POWESHIEK RINGGOLD SAC SCOTT SHELBY SIOUX STORY TAMA TAYLOR UNION VAN BUREN WAPELLO WARREN WASHINGTON WAYNE WEBSTER WINNEBAGO WINNESHIEK WOODBURY WORTH WRIGHT
KENTUCKY-STATE CODE 51 10 ADAIR 30 ALLEN 50 ANDERSON 70 BALLARD 90 BARREN 110 BATH 130 BELL 150 BOONE 170 BOURBON 190 BOYD 210 BOYLE 230 BRACKEN 250 BREATHITT 270 BRECKINRIDGE 290 BULLITT 310 BUTLER 330 CALDWELL
1850 Public Use Microdata Sample User's Guide and Technical Documentation
350 370 410 430 450 470 490 510 530 550 570 590 610 630 650 670 690 710 730 750 770 790 810 830 850 870 890 910 930 950 970 990 1010 1030 x050 1070 1090 1110 1130 1150 1155 1170 1210 1230 1250 1270 1290 1310 1330 1350 1370 1390 1410 1430 1510
CALLOWAY CAMPBELL CARROLL CARTER CASEY CHRISTIAN CLARK CLAY CLINTON CRITTENDEN CUMBERLAND DAVIESS EDMONSON ELLIOTT ESTILL FAYETTE FLEMING FLOYD FRANKLIN FULTON GALLATIN GARRARD GRANT GRAVES' GRAYSON GREEN GREENUP HANCOCK HARDIN HARLAN HARRISON HART HENDERSON HENRY HICKMAN HOPKINS JACKSON JEFFERSON JESSAMINE JOHNSON JOSH BELL KENTON KNOX LARUE LAUREL LAWRENCE LEE LESLIE LETCHER LEWIS LINCOLN LIVINGSTON LOGAN LYON MADISON
1850 Public Use Microdata Sample
User's Guide and Technical Documentation
1530 1550 1570 1590 1610 1450 1490 1630 1650 1670 1690 1710 1730 1750 1770 1790 1810 1830 1650 1870 1890 1910 1930 1950 1970 1990 2010 2030 2050 2070 2090 2110 2130 2150 2170 2190 2210 2230 2250 2270 2290 2310 2330 2350 2370 2390
MAGOFFIN MARION MARSHALL MARTIN MASON MCCRACKEN MCLEAN MEADE MENIFEE MERCER METCALFE MONROE MONTGOMERY MORGAN MUHLENBERG NELSON NICHOLAS OHIO OLDHAM OWEN OWSLEY PENDLETON PERRY PIKE POWELL PULASKI ROBERTSON ROCKCASTLE ROWAN RUSSELL SCOTT SHELBY SIMPSON SPENCER TAYLOR TODD TRIGG TRIMBLE UNION WARREN WASHINGTON WAYNE WEBSTER WHITLEY WOLFE WOODFORD
LOUISIANA-STATE CODE 45 50 ASCENSION 70 ASSUMPTION 90 AVOYELLES 130 BIENVILLE 150 BOSSIER 170 CADDO 190 CALCASIEU
Appendix: County Codes by State (ICPSR Coding
Page 97
210 230 250 270 290 310 330 350 370 410 430 450 470 490 510 550 570 610 630 650 670 690 710 730 750 770 790 810 830 850 870 890 910 930 950 970 990 1010 1030 1050 1070 1090 1110 1130 1150 1170 1190 1210 1230 1250 1270
CALDWELL CAMERON CATAHOULA CLAIBORNE CONCORDIA DE SOTO EAST BATON ROUGE EAST CARROLL EAST FELICIANA FRANKLIN GRANT IBERIA IBERVILLE JACKSON JEFFERSON LAFAYETTE LAFOURCHE LINCOLN LIVINGSTON MADISON MOREHOUSE NATCHITOCHES ORLEANS OUACHITA PLAQUEMINES POINTE COUPEE RAPIDES RED RIVER RICHLAND SABINE ST BERNARD ST CHARLES ST HELENA ST JAMES ST JOHN THE--BAPTIST ST LANDRY ST MARTIN ST MARY ST TAMMANY TANGIPAHOA TENSAS TERREBONNE UNION VERMILLION VERNON WASHINGTON WEBSTER WEST BATON ROUGE WEST CARROLL WEST FELICIANA WINN
MAINE--STATE CODE 02 10 ANDROSCOGGIN 30 AROOSTOOK
Appendix A: County Codes by State Page 98 50
70 90 110 130 150 170 190 210 230 250 270 290 310
CUMBERLAND FRANKLIN HANCOCK KENNEBEC KNOX LINCOLN OXFORD PENOBSCOT PISCATAQUIS SAGADAHOC SOMERSET WALDO WASHINGTON YORK
MARYLAND-STATE CODE 52 10 ALLEGANY 30 ANNE ARUNDEL 50 BALTIMORE 70 CALVERT 90 CAROLINE 110 CARROLL 130 CECIL 150 CHARLES 170 DORCHESTER 190 FREDERICK 210 GARRETT 230 HARFORD 250 HOWARD 270 KENT 290 MONTGOMERY 310 PRINCE GEORGES 330 QUEEN ANNES 350 SOMERSET 370 ST MARYS 390 TALBOT 410 WASHINGTON 430 WICOMICO 450 WORCESTER MASSACHUSETTS-STATE CODE 03 10 BARNSTABLE 30 BERKSHIRE 50 BRISTOL 70 DUKES 90 ESSEX 110 FRANKLIN 130 HAMPDEN 150 HAMPSHIRE 170 MIDDLESEX 190 NANTUCKET 210 NORFOLK 230 PLYMOUTH 250 SUFFOLK 270 WORCESTER
1850 Public Use Microdata Sample User's Guide and Technical Documentation
MICHIGAN-STATE CODE 23 10 ALCONA 50 ALLEGAN 70 ALPENA 90 ANTRIM 130 BARAGA 150 BARRY 170 BAY 190 BENZIE 210 BERRIEN 230 BRANCH 250 CALHOUN 270 CASS 290 CHARLEVOIX 310 CHEBOYGAN 330 CHIPPEWA 350 CLARE 370 CLINTON 390 CRAWFORD 410 DELTA 450 EATON 470 EMMET 490 GENESEE 510 GLADWIN 550 GRAND TRAVERSE 570 GRATIOT 590 HILLSDALE 610 HOUGHTON 630 HURON 650 INGHAM 670 IONIA 690 IOSCO 730 ISABELLA 735 ISLE ROYALE 750 JACKSON 770 KALAMAZOO 790 KALKASKA 810 KENT 830 KEWEENAW 850 LAKE 870 LAPEER 890 LEELANAU 910 LENAWEE 930 LIVINGSTON 970 MACKINAC/MICHILIM 990 MACOMB 1010 MANISTEE 1015 MANITOU 1030 MARQUETTE 1050 MASON 1070 MECOSTA 1090 MENOMINEE 1110 MIDLAND 1130 MISSAUKEE
1850 Public Use Microdata Sample
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1170 1190 1210 1230 1250 1270 1290 1310 1330 1350 1370 1390 1410 1430 1450 1510 1530 1550 1470 1490 1570. 1590 1610 1630 1650
MONROE MONTCALM MONTMORENCY MUSKEGON NEWAYGO OAKLAND OCEANA OGEMAW ONTONAGON OSCEOLA OSCODA OTSEGO OTTAWA PRESQUE ISLE ROSCOMMON SAGINAW SANILAC SCHOOLCRAFT SHIAWASSEE ST CLAIR ST JOSEPH TUSCOLA VAN BUREN WASHTENAW WAYNE WEXFORD
MINNESOTA TER .-STATE CODE 33 10 AITKIN 30 ANOKA 50 BECKER 70 BELTRAMI 90 DENTON 110 BIG STONE 130 BLUE EARTH 150 BROWN 170 CARLTON 190 CARVER 210 CASS 230 CHIPPEWA 250 CHISAGO 270 CLAY 310 COOK 330 COTTONWOOD 350 CROW WING 370 DAKOTA 390 DODGE 410 DOUGLAS 430 FARIBAULT 450 FILLMORE 470 FREEBORN 490 GOODHUE 510 GRANT 530 HENNEPIN 550 HOUSTON
Appendix: County Codes by State (ICPSR Coding) Page 99
590 610 630 650 670 690 730 750 790 810 830 890 910 850 930 950 970 990 1010 1030 1050 1090 1110 1150 1170 1190 1210 1230 1270 1290 1310 1330 1390 1410 1430 1370 1450 1470 1490 1510 1530 1550 1570 1590 1610 1630 1650 1670 1690 1710 1730
ISANTI ITASCA JACKSON KANABEC KANDIYOHI KITTSON/PEMBINA LAC QUI PARLE LAKE LE SUEUR LINCOLN LYON MARSHALL MARTIN MCLEOD MEEKER MILLE LACS MORRISON MOWER MURRAY NICOLLET NOBLES OLMSTED OTTER TAIL PINE PIPESTONE POLK POPE RAMSEY REDWOOD RENVILLE RICE ROCK SCOTT SHERBURNE SIBLEY ST LOUIS STEARNS STEELE STEVENS SWIFT TODD TRAVERSE WABASHA WADENA WASECA WASHINGTON WATONWAN WILKIN/TOOMBS WINONA WRIGHT YELLOW MEDICINE
MISSISSIPPI-STATE CODE 46 10 ADAMS 30 ALCORN
Appendix A : County Codes by State
Page 100 50
70 90 110 130 150 170 190 210 230 250 270 290 310 330 370 410 430 450 470 490 510 550 570 590 610 630 670 690 710 750 770 790 810 830 850 870 890 910 930 950 970 990 1010 1030 1050 1070 1110 1130 1150 1170 1190 1210 1230 1250
AMITE ATTALA BENTON BOLIVAR CALHOUN CARROLL CHICKASAW CHOCTAW CLAIBORNE CLARKE CLAY COAHOMA COPIAH COVINGTON DE SOTO FRANKLIN GREENE GRENADA HANCOCK HARRISON HINDS HOLMES ISSAQUENA ITAWAMBA JACKSON JASPER JEFFERSON JONES KEMPER LAFAYETTE LAUDERDALE LAWRENCE LEAKE LEE LEFLORE LINCOLN LOWNDES MADISON MARION MARSHALL MONROE MONTGOMERY NESHOBA NEWTON NOXUBEE OKTIBBEHA PANOLA PERRY PIKE PONTOTOC PRENTISS QUITMAN RANKIN SCOTT SHARKEY
1850 Public Use Microdata Sample User's Guide and Technical Documentation
1270 1290 1315 1330 1350 1370 1390 1410 1430 1450 1490 1510 1530 1570 1590 1610 1630
SIMPSON SMITH SUMNER SUNFLOWER TALLAHATCHIE TATE TIPPAH TISHOMINGO TUNICA UNION WARREN WASHINGTON WAYNE WILKINSON WINSTON YALOBUSHA YAZOO
MISSOURI-STATE CODE 34 10 ADAIR 30 ANDREW 50 ATCHISON 70 AUDRAIN 90 BARRY 110 BARTON 130 BATES 150 BENTON 170 BOLLINGER 190 BOONE 210 BUCHANAN 230 BUTLER 250 CALDWELL 270 CALLAWAY 290 CAMDEN -310 CAPE GIRARDEAU .330 CARROLL 350 CARTER 370 CASS/VAN BUREN 390 CEDAR 410 CHARITON 430 CHRISTIAN 450 CLARK 470 CLAY 490 CLINTON 510 COLE 530 COOPER 550 CRAWFORD 570 DADE 590 DALLAS 610 DAVIESS 630 DE KALB 650 DENT 670 DOUGLAS 690 DUNKLIN -710 FRANKLIN
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730 750 770 790 810 830 850 870 890 910 930 950 970 990 1010 1030 1050 1070 1090 1110 1130 1150 1170 1210 1230 1250 1270 1190 1290 1310 1330 1350 1370 1390 1410 1430 1450 1470 1490 1510 1530 1550 1570 1590 1610 1630 1650 1670 1690 1710 1730 1750 1770 1790 1810
GASCONADE GENTRY GREENE GRUNDY HARRISON HENRY/RIVES HICKORY HOLT HOWARD HOWELL IRON JACKSON JASPER JEFFERSON JOHNSON KNOX LACLEDE LAFAYETTE LAWRENCE LEWIS LINCOLN LINN LIVINGSTON MACON MADISON MARIES MARION MCDONALD MERCER MILLER MISSISSIPPI MONITEAU MONROE MONTGOMERY MORGAN NEW MADRID NEWTON NODAWAY OREGON OSAGE OZARK PEMISCOT PERRY PETTIS PHELPS PIKE PLATTE POLK PULASKI PUTNAM RALLS RANDOLPH RAY REYNOLDS RIPLEY
Appendix: County Codes by State (ICPSR Coding) Page 101
1950 1970 1990 2010 2030 2050 1830 1850 1870 1890 1930 2070 2090 2110 2130 2150 2170 2190 2210 2230 2250 2270 2290
SALINE SCHUYLER SCOTLAND SCOTT SHANNON SHELBY ST CHARLES ST CLAIR ST FRANCOIS ST LOUIS STE GENEVIEVE STODDARD STONE SULLIVAN TANEY TEXAS VERNON WARREN WASHINGTON WAYNE WEBSTER WORTH WRIGHT
NEW EAMPSEIRE-STATE CODE 04 10 BELKNAP 30 CARROLL 50 CHESHIRE 70 COOS 90 GRAFTON 110 HILLSBOROUGH 130 MERRIMACK 150 ROCKINGHAM 170 STRAFFORD 190 SULLIVAN NEW JERSEY-STATE CODE 12 10 ATLANTIC 30 BERGEN 50 BURLINGTON 70 CAMDEN 90 CAPE MAY 110 CUMBERLAND 130 ESSEX 150 GLOUCESTER 170 HUDSON 190 HUNTERDON 210 MERCER 230 MIDDLESEX 250 MONMOUTH 270 MORRIS 290 OCEAN 310 PASSAIC 330 SALEM 350 SOMERSET
Appendix A: County Codes by State Page 102
370 SUSSEX 390 UNION 410 WARREN NEW MEXICO TER .- CODE 66 010 BERNALILLO 390 RIO ARRIBA 470 SAN MIGUEL 490 SANTA FE 550 TAOS 610 VALENCIA NEW YORK-STATE CODE 13 10 ALBANY 30 ALLEGANY 70 - BROOME 90 CATTARAUGUS 110 CAYUGA 130 CHAUTAUQUA 150 CHEMUNG 170 CHENANGO 190 CLINTON 210 COLUMBIA 230 CORTLAND 250 DELAWARE 270 DUTCHESS 290 ERIE 310 ESSEX 330 FRANKLIN 350 FULTON 370 GENESEE 390 GREENE 410 HAMILTON 430 HERKIMER 450 JEFFERSON 470 KINGS 490 LEWIS 510 LIVINGSTON 530 MADISON 550 MONROE 570 MONTGOMERY 610 NEW YORK 630 NIAGARA 650 ONEIDA 670 ONONDAGA 690 ONTARIO 710 ORANGE 730 ORLEANS 750 OSWEGO 770 OTSEGO 790 PUTNAM 810 QUEENS 830 RENSSELAER 850 RICHMOND 870 ROCKLAND
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910 930 950 970 990 890 1010 1030 1050 1070 1090 1110 1130 1150 1170 1190 1210 1230 NORTH 10 30 50 70 90 130 150 170 190 210 230 250 270 290 -310 330 350 370 390 410 430 450 470 490 510 530 550 570 590 610 650 670 690 710 730
SARATOGA SCHENECTADY SCHOHARIE SCHUYLER SENECA ST LAWRENCE STEUBEN SUFFOLK SULLIVAN TIOGA TOMPKINS ULSTER WARREN WASHINGTON WAYNE WESTCHESTER WYOMING YATES CAROLINA-STATE CODE 47 ALAMANCE ALEXANDER ALLEGHANY ANSON ASHE BEAUFORT BERTIE BLADEN BRUNSWICK BUNCOMBE BURKE CABARRUS CALDWELL CAMDEN CARTERET CASWELL CATAWBA CHATHAM CHEROKEE CHOWAN CLAY CLEVELAND COLUMBUS CRAVEN CUMBERLAND CURRITUCK DARE DAVIDSON DAVIE DUPLIN EDGECOMBE FORSYTH FRANKLIN GASTON GATES
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750 770 790 610 830 850 870 890 910 950 970 990 1010 1030 1070 1090 1130 1150 1170 1110 1190 1210 1230 1250 1270 1290 1310 1330 1350 1370 1390 1410 1430 1450 1470 1490 1510 1530 1550 1570 1590 1610 1630 1670 1690 1710 1730 1750 1770 1790 1830 1850 1870 1890 1910
GRAHAM GRANVILLE GREENE GUILFORD HALIFAX HARNETT HAYWOOD HENDERSON HERTFORD HYDE IREDELL JACKSON JOHNSTON JONES LENOIR LINCOLN MACON MADISON MARTIN MCDOWELL MECKLENBURG MITCHELL MONTGOMERY MOORE NASH NEW HANOVER NORTHAMPTON ONSLOW ORANGE PAMLICO PASQUOTANK PENDER PERQUIMANS PERSON PITT POLK RANDOLPH RICHMOND ROBESON ROCKINGHAM ROWAN RUTHERFORD SAMPSON STANLY STOKES SURRY SWAIN TRANSYLVANIA TYRRELL UNION WAKE WARREN WASHINGTON WATAUGA WAYNE
Appendix: County Codes by State (ICPSR Coding)
Page 103
1930 1950 1970 1990
WILKES WILSON YADKIN YANCEY
OHIO-STATE CODE 24 10 ADAMS 30 ALLEN 50 ASHLAND 70 ASHTABULA 90 ATHENS 110 AUGLAIZE 130 BELMONT 150 BROWN 170 BUTLER 190 CARROLL 210 CHAMPAIGN 230 CLARK 250 CLERMONT 270 CLINTON 290 COLUMBIANA 310 COSHOCTON 330 CRAWFORD 350 CUYAHOGA 370 DARKE 390 DEFIANCE 410 DELAWARE 430 ERIE 450 FAIRFIELD 470 FAYETTE 490 FRANKLIN 510 FULTON 530 GALLIA 550 GEAUGA 570 GREENE 590 GUERNSEY 610 HAMILTON 630 HANCOCK 650 HARDIN 670 HARRISON 690 HENRY 710 HIGHLAND 730 HOCKING 750 HOLMES 770 HURON 790 JACKSON 810 JEFFERSON 830 KNOX 850 LAKE 870 LAWRENCE 890 LICKING 910 LOGAN 930 LORAIN 950 LUCAS 970 MADISON
Appendix A: County Codes by State Page 104
990 MAHONING 1010 MARION 1030 MEDINA 1050 MEIGS 1070 MERCER 1090 MIAMI 1110 MONROE 1130 MONTGOMERY 1150 MORGAN 1170 MORROW 1190 MUSKINGUM 1210 NOBLE 1230 OTTAWA 1250 PAULDING , 1270 PERRY 1290 PICKAWAY 1310 PIKE 1330 PORTAGE 1350 PREBLE 1370 PUTNAM 1390 RICHLAND 1410 ROSS 1430 SANDUSKY 1450 SCIOTO 1470 SENECA 1490 SHELBY 1510 STARK 1530 SUMMIT 1550 TRUMBULL 1570 TUSCARAWAS 1590 UNION 1610 VAN WERT 1630 VINTON 1650 WARREN 1670 .WASHINGTON 1690 WAYNE 1710 WILLIAMS 1730 WOOD 1750 WYANDOT
OREGON TER .-STATE CODE 72 10 BAKER 30 BENTON 50 CLACKAMAS 70 CLATSOP 90 COLUMBIA 110 COOS 150 CURRY 190 DOUGLAS 230 GRANT 290 JACKSON 330 JOSEPHINE 370 LAKE 390 LANE 430 LINN
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470 510 530 570 590 610 650 670 710
MARION MULTNOMAH POLK TILLAMOOK UMATILLA UNION WASCO WASHINGTON YAMHILL
PENNSYLVANIA-STATE CODE 14 10 ADAMS 30 ALLEGHENY 50 ARMSTRONG 70 BEAVER 90 BEDFORD 110 BERKS 130 BLAIR 150 BRADFORD 170 BUCKS 190 BUTLER 210 CAMBRIA 230 CAMERON 250 CARBON 270 CENTRE 290 CHESTER 310 CLARION 330 CLEARFIELD 350 CLINTON 370 COLUMBIA 390 CRAWFORD 410 CUMBERLAND 430 DAUPHIN 450 DELAWARE -470 ELK 490 ERIE 510 FAYETTE 530 FOREST 550 FRANKLIN 570 FULTON 590 GREENE 610 HUNTINGDON 630 INDIANA 650 JEFFERSON 670 JUNIATA 690 LACKAWANNA 710 LANCASTER 730 LAWRENCE 750 LEBANON 770 LEHIGH 790 LUZERNE 810 LYCOMING 830 MCKEAN 850 MERCER 870 MIFFLIN
1850 Public Use Microdata Sample User's Guide and Technical Documentation
890 910 930 950 970 990 1010 1030 1050 1070 1090 1110 1130 1150 1170 1190 1210 1230 1250 1270 1290 1310 1330
MONROE MONTGOMERY MONTOUR NORTHAMPTON NORTHUMBERLAND PERRY PHILADELPHIA PIKE POTTER SCHUYLKILL SNYDER SOMERSET SULLIVAN SUSQUEHANNA TIOGA UNION VENANGO WARREN WASHINGTON WAYNE WESTMORELAND WYOMING YORK
RHODE 10 30 50 70 90
ISLAND-STATE CODE 05 BRISTOL KENT NEWPORT PROVIDENCE WASHINGTON
SOUTH 10 30 70 110 130 190 230 250 270 290 310 370 390 430 450 490 510 550 570 590 630 670 690
CAROLINA-STATE CODE 48 ABBEVILLE AIKEN ANDERSON BARNWELL BEAUFORT CHARLESTON CHESTER CHESTERFIELD CLARENDON COLLETON DARLINGTON EDGEFIELD FAIRFIELD GEORGETOWN GREENVILLE HAMPTON HORRY KERSHAW LANCASTER LAURENS LEXINGTON MARION MARLBORO
Appendix: County Codes by State (ICPSR Coding)
Page 105
710 730 750 770 790 830 850 870 890 910
NEWBERRY OCONEE ORANGEBURG PICKENS RICHLAND SPARTANBURG SUMTER UNION WILLIAMSBURG YORK
TENNESSEE-STATE CODE 54 10 ANDERSON 30 BEDFORD 50 DENTON 70 BLEDSOE 90 BLOUNT 110 BRADLEY 130 CAMPBELL 150 CANNON 170 CARROLL 190 CARTER 210 CHEATHAM 250 CLAIBORNE 270 CLAY 290 COCKE 310 COFFEE 330 CROCKETT 350 CUMBERLAND 370 DAVIDSON 410 DE KALB 390 DECATUR 430 DICKSON 450 DYER 470 FAYETTE 490 FENTRESS 510 FRANKLIN 530 GIBSON 550 GILES 570 GRAINGER 590 GREENE 610 GRUNDY 630 HAMBLEN 650 HAMILTON 670 HANCOCK 690 HARDEMAN 710 HARDIN 730 HAWKINS 750 HAYWOOD 770 HENDERSON 790 HENRY 810 HICKMAN 830 HOUSTON 850 HUMPHREYS 870 JACKSON
Appendix A: County Codes by State Page 106
875 890 910 930 950 970 990 1010 1030 1050 1110 1130 1150 1170 1190 1070 1090 1210 1230 1250 1270 1290 1310 1330 1350 1390 1410 1430 1450 1470 1490 1510 1530 1550 1570 1590 1610 1630 1650 1670 1690 1710 1730 1750 1770 1790 1810 1830 1850 1870 1890
JAMES JEFFERSON JOHNSON KNOX LAKE LAUDERDALE LAWRENCE LEWIS LINCOLN LOUDON MACON MADISON MARION MARSHALL MAURY MCMINN MCNAIRY MEIGS MONROE MONTGOMERY MOORE MORGAN OBION OVERTON PERRY POLK PUTNAM RHEA ROANE ROBERTSON RUTHERFORD SCOTT SEQUATCHIE SEVIER SHELBY SMITH STEWART SULLIVAN SUMNER TIPTON TROUSDALE UNICOI UNION VAN BUREN WARREN WASHINGTON WAYNE WEAKLEY WHITE WILLIAMSON WILSON
TEXAS-STATE CODE 49 10 ANDERSON 30 ANDREWS
_
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50 70 90 110 130 150 170 190 210 230 250 270 290 310 330 350 370 390 410 450 490 510 530 550 570 590 610 630 650 670 690 710 730 750 --770 790 830 850 870 890 910 930 950 970 990 1010 1050 1070 1110 1130 1150 1230 1170 1190 1210
ANGELINA ARANSAS ARCHER ARMSTRONG ATASCOSA AUSTIN BAILEY BANDERA BASTROP BAYLOR BEE BELL BEXAR BLANCO BORDEN BOSQUE BOWIE BRAZORIA BRAZOS BRISCOE BROWN BURLESON BURNET CALDWELL CALHOUN CALLAHAN CAMERON CAMP CARSON CASS/DAVIS CASTRO CHAMBERS CHEROKEE CHILDRESS CLAY COCHRAN COLEMAN COLLIN COLLINGSWORTH COLORADO COMAL COMANCHE CONCHO COOKE CORYELL COTTLE CROCKETT CROSBY DALLAM DALLAS DAWSON DE WITT DEAF SMITH DELTA DENTON
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1250 1270 1290 1310 1330 1370 1410 1390 1415 1430 1450 1470 1490 1510 1530 1570 1590 1610 1630 1650 1670 1690 1710 1750 1770 1790 1810 1830 1850 1870 1890 1910 1930 1950 1970 1990 2010 2030 2050 2070 2090 2110 2130 2150 2170 2190 2210 2230 2250 2270 2310 2330 2370 2390 2410
DICKENS DIMMIT DONLEY DUVAL EASTLAND EDWARDS EL PASO ELLIS ENCINAL ERATH FALLS FANNIN FAYETTE FISHER FLOYD FORT BEND FRANKLIN FREESTONE FRIO GAINES GALVESTON GARZA GILLESPIE GOLIAD GONZALES GRAY GRAYSON GREGG GRIMES GUADALUPE HALE HALL HAMILTON HANSFORD HARDEMAN HARDIN HARRIS HARRISON HARTLEY HASKELL HAYS HEMPHILL HENDERSON HIDALGO HILL HOCKLEY HOOD HOPKINS HOUSTON HOWARD HUNT HUTCHINSON JACK JACKSON JASPER
Appendix: County Codes by State (ICPSR Coding)
Page 107
2450 2510 2530 2550 2570 2590 2630 2650 2670 2690 2710 2750 2830 2770 2790 2810 2850 2870 2890 2910 2930 2950 2970 2990 3030 3050 3130 3150 3170 3190 3210 3230 3070 3090 3110 3250 3270 3310 3350 3370 3390 3410 3430 3450 3470 3490 3510 3530 3550 3570 3590 3610 3630 3650 3670
JEFFERSON JOHNSON JONES KARNES KAUFMAN KENDALL KENT KERR KIMBLE KING KINNEY KNOX LA SALLE LAMAR LAMB LAMPASAS LAVACA LEE LEON LIBERTY LIMESTONE LIPSCOMB LIVE OAK LLANO LUBBOCK LYNN MADISON MARION MARTIN MASON MATAGORDA MAVERICK MCCULLOCH MCLENNAN MCMULLEN MEDINA MENARD MILAM MITCHELL MONTAGUE MONTGOMERY MOORE MORRIS MOTLEY NACOGDOCHES NAVARRO NEWTON NOLAN NUECES OCHILTREE OLDHAM ORANGE PALO PINTO PANOLA PARKER
Appendix A: County Codes by State Page 108
3690 3710 3730 3750 3770 3790 3810 3870 3910 3930 3950 3970 3990 4010 4030 4050 4070 4090 4110 4150 4170 4190 42-10 4230 4250 4270 4290 4330 4370 4390 4410 4450 4470 4490 4510 4530 4550 4570 4590 4630 4670 4690 4710 4730 4770 4790 4810 4830 4850 4870 4910 4930 4970 4990 5010
PARMER PECOS POLK POTTER PRESIDIO RAINS RANDALL RED RIVER REFUGIO ROBERTS ROBERTSON ROCKWALL RUNNELS RUSK SABINE SAN AUGUSTINE SAN JACINTO SAN PATRICIO SAN SABA SCURRY SHACKELFORD SHELBY SHERMAN SMITH SOMERVELL STARR STEPHENS/BUCHANAN STONEWALL SWISHER TARRANT TAYLOR TERRY THROCKMORTON TITUS TOM GREEN TRAVIS TRINITY TYLER UPSHUR UVALDE VAN ZANDT VICTORIA WALKER WALKER WASHINGTON WEBB WHARTON WHEELER WICHITA WILBARGER WILLIAMSON WILSON WISE WOOD YOAKUM
1850 Public UseMicrodata Sample User's Guide and Technical Documentation
5030 YOUNG 5050 ZAPATA 5070 ZAVALA UTAH TER .-STATE CODE 67 110 DAVIS 210 IRON 350 SALT LAKE 390 SANPETE 490 UTAH 570 WEBER VERMONT--STATE CODE 0 6 10 ADDISON 30 BENNINGTON 50 CALEDONIA 70 CHITTENDEN 90 ESSEX 110 FRANKLIN 130 GRAND ISLE 150 LAMOILLE 170 ORANGE 190 ORLEANS 210 RUTLAND 230 WASHINGTON 250 WINDHAM 270 WINDSOR VIRGINIA-STATE CODE 40 10 ACCOMACK 30 ALBEMARLE 50 ALLEGHANY 70 AMELIA 90 AMHERST -110 APPOMATTOX __ 130 ARLINGTON/ALEXAND 150 AUGUSTA 155 BARBOUR 170 BATH 190 BEDFORD 195 BERKELEY 215 BOONE 230 BOTETOURT 235 BRAXTON 245 BROOKE 250 BRUNSWICK 290 BUCKINGHAM 295 CABELL 310 CAMPBELL 330 CAROLINE 350 CARROLL 360 CHARLES CITY 370 CHARLOTTE 410 CHESTERFIELD
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430 470 490 530 535 550 570 590 610 615 630 650 670 690 710 715 730 750 770 775 790 810 830 850 855 865 870 890 910 930 935 950 955 965 970 990 1010 1030 1050 1055 1065 1070 1090 1110 '113 0 1141 1145 1148 1150 1170 1175 1190 1195 1205 1210
CLARKE CULPEPER CUMBERLAND DINWIDDIE DODDRIDGE ELIZABETH CITY ESSEX FAIRFAX FAUQUIER FAYETTE FLOYD FLUVANNA FRANKLIN FREDERICK GILES GILMER GLOUCESTER GOOCHLAND GRAYSON GREENBRIER GREENE GREENSVILLE HALIFAX HANOVER HARDY HARRISON HENRICO HENRY HIGHLAND ISLE OF WIGHT JACKSON JAMES CITY JEFFERSON KANAWHA KING AND QUEEN KING GEORGE KING WILLIAM LANCASTER LEE LEWIS LOGAN LOUDOUN LOUISA LUNENBURG MADISON MARION MARSHALL MASON MATHEWS MECKLENBURG MERCER MIDDLESEX MONONGALIA MONROE MONTGOMERY'
Appendix : County Codes by State (ICPSR Coding)
Page 109
1215 1230 1250 1270 1275 1290 1310 1330 1350 1355 1370 1390 1410 1415 1430 1445 1450 1455 1470 1490 1530 1510 1550 1555 1565 1567 1570 1590 1595 1610 1630 1650 1670 1690 1710 1730 1750 1770 1790 1810 1830 1835 1850 1859 1870 1875 1910 1915 1930 1935 1945 1955 1965 1970 1990
MORGAN NANSEMOND NELSON NEW KENT NICHOLAS NORFOLK NORTHAMPTON NORTHUMBERLAND NOTTOWAY OHIO ORANGE PAGE PATRICK PENDLETON PITTSYLVANIA POCAHONTAS POWHATAN PRESTON PRINCE EDWARD PRINCE GEORGE PRINCE WILLIAM PRINCESS ANNE PULASKI PUTNAM RALEIGH RANDOLPH RAPPAHANNOCK RICHMOND RITCHIE ROANOKE ROCKBRIDGE ROCKINGHAM RUSSELL SCOTT SHENANDOAH SMYTH SOUTHAMPTON SPOTSYLVANIA STAFFORD SURRY SUSSEX TAYLOR TAZEWELL TYLER WARREN WARWICK WASHINGTON . WAYNE WESTMORELAND WETZEL WIRT WOOD WYOMING WYTHE YORK
Appendix A: County Codes by State Page 110
WISCONSIN--STATE CODE 25 10 ADAMS 30 ASHLAND 50 BARRON/DALLAS 70 BAYFIELD/LA POINT 90 BROWN 110 BUFFALO 130 BURNETT 150 CALUMET 170 CHIPPEWA 190 CLARK 210 COLUMBIA 230 CRAWFORD 250 DANE 270 DODGE 290 DOOR 310 DOUGLAS 330 DUNN 350 EAU CLAIRE 390 FOND DU LAC 430 GRANT 450 GREEN 470 GREEN LAKE 490 IOWA 530 JACKSON 550 JEFFERSON 570 JUNEAU 590 KENOSHA 610 KEWAUNEE 630 LA CROSSE 650 LAFAYETTE 670 LANGLADE 690 LINCOLN 710 MANITOWOC 730 MARATHON 750 MARINETTE 770 MARQUETTE 790 MILWAUKEE 810 MONROE 830 OCONTO 870 OUTAGAMIE 890 OZAUKEE 910 PEPIN 930 PIERCE 950 POLK 970 PORTAGE 990 PRICE 1010 RACINE 1030 RICHLAND 1050 ROCK 1110 SAUK 1150 SHAWANO 1170 SHEBOYGAN
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1210 1230 1270 1310 1330 1350 1370 1390 1410
ST CROIX
TAYLOR TREMPEALEAU VERNON/BAD AX WALWORTH WASHINGTON WAUKESHA WAUPACA WAUSHARA WINNEBAGO WOOD