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Papers Containing Keywords(s): 'ethnicity'

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American Community Survey - 64

Census Bureau Disclosure Review Board - 46

Protected Identification Key - 42

Internal Revenue Service - 36

2010 Census - 33

Social Security Number - 31

Social Security Administration - 29

Decennial Census - 27

National Science Foundation - 24

Disclosure Review Board - 22

Current Population Survey - 22

Social Security - 20

Center for Economic Studies - 20

Office of Management and Budget - 19

Person Validation System - 18

Ordinary Least Squares - 18

Department of Housing and Urban Development - 18

Metropolitan Statistical Area - 17

Census 2000 - 17

Longitudinal Employer Household Dynamics - 16

Person Identification Validation System - 16

Some Other Race - 16

W-2 - 16

Housing and Urban Development - 14

North American Industry Classification System - 14

1940 Census - 13

Federal Statistical Research Data Center - 12

Census Numident - 12

Survey of Business Owners - 12

Individual Taxpayer Identification Numbers - 11

Special Sworn Status - 10

Personally Identifiable Information - 10

Indian Health Service - 10

Longitudinal Business Database - 10

Research Data Center - 9

Adjusted Gross Income - 9

Indian Housing Information Center - 9

Harvard University - 9

Bureau of Labor Statistics - 8

Medicaid Services - 8

Centers for Medicare - 8

Integrated Public Use Microdata Series - 8

Survey of Income and Program Participation - 8

National Institutes of Health - 8

Master Address File - 8

Postal Service - 8

Business Register - 8

Administrative Records - 8

Public Use Micro Sample - 8

Chicago Census Research Data Center - 8

Census Household Composition Key - 7

Bureau of Economic Analysis - 7

International Trade Research Report - 7

Federal Reserve Bank - 6

Alfred P Sloan Foundation - 6

Earned Income Tax Credit - 6

University of Chicago - 6

Core Based Statistical Area - 6

Computer Assisted Personal Interview - 6

Supreme Court - 6

Employer Identification Numbers - 6

Cornell Institute for Social and Economic Research - 6

Citizenship and Immigration Services - 6

Characteristics of Business Owners - 6

Consolidated Metropolitan Statistical Areas - 6

Cornell University - 5

Census Edited File - 5

General Accounting Office - 5

MTO - 5

Opportunity Atlas - 5

Center for Administrative Records Research and Applications - 5

General Education Development - 5

Department of Commerce - 5

National Bureau of Economic Research - 5

Generalized Method of Moments - 5

American Housing Survey - 5

Annual Survey of Entrepreneurs - 5

Temporary Assistance for Needy Families - 5

Department of Homeland Security - 5

Sample Edited Detail File - 5

Hypothesis 2 - 4

Department of Education - 4

Stanford University - 4

NUMIDENT - 4

Department of Labor - 4

Center for Administrative Records Research - 4

National Center for Health Statistics - 4

Computer Assisted Telephone Interviews and Computer Assisted Personal Interviews - 4

Supplemental Nutrition Assistance Program - 4

Census Bureau Master Address File - 4

SSA Numident - 4

Pew Research Center - 4

Department of Justice - 4

PIKed - 4

Russell Sage Foundation - 4

Organization for Economic Cooperation and Development - 4

Integrated Longitudinal Business Database - 4

University of Minnesota - 4

Federal Reserve System - 3

Health and Retirement Study - 3

Disability Insurance - 3

United States Census Bureau - 3

MAFID - 3

Service Annual Survey - 3

PSID - 3

Survey of Consumer Finances - 3

Data Management System - 3

CATI - 3

Unemployment Insurance - 3

National Opinion Research Center - 3

American Economic Association - 3

Oil and Gas Extraction - 3

Employment History File - 3

Individual Characteristics File - 3

Accommodation and Food Services - 3

Robert Wood Johnson Foundation - 3

UC Berkeley - 3

Small Business Administration - 3

Technical Services - 3

Arts, Entertainment - 3

Agriculture, Forestry - 3

Legal Form of Organization - 3

Census Bureau Business Register - 3

County Business Patterns - 3

Kauffman Firm Survey - 3

Kauffman Foundation - 3

Minnesota Population Center - 3

ethnic - 77

hispanic - 77

immigrant - 56

minority - 55

racial - 55

population - 51

race - 48

immigration - 34

white - 33

segregation - 33

resident - 27

migrant - 27

neighborhood - 27

black - 26

disparity - 26

mexican - 23

disadvantaged - 22

latino - 22

native - 22

discrimination - 20

segregated - 19

poverty - 19

survey - 19

housing - 16

census bureau - 16

residence - 16

respondent - 16

socioeconomic - 15

census data - 15

workforce - 15

migration - 14

metropolitan - 14

census responses - 14

asian - 14

employed - 14

citizen - 13

ancestry - 13

entrepreneur - 13

entrepreneurship - 13

employ - 13

family - 12

heterogeneity - 11

residential - 11

ethnically - 11

assimilation - 10

interracial - 10

intergenerational - 10

immigrated - 9

race census - 9

immigrant population - 8

neighbor - 8

residential segregation - 8

use census - 8

1040 - 8

indian - 8

labor - 8

census household - 8

immigrant entrepreneurs - 8

workplace - 8

migrate - 7

generation - 7

percentile - 7

suburb - 7

record - 7

entrepreneurial - 7

venture - 7

recession - 7

residing - 6

reside - 6

grandparent - 6

statistical - 6

eligibility - 6

enrollment - 6

irs - 6

income white - 6

sociology - 6

citizenship - 6

data - 6

2010 census - 6

migrating - 6

employee - 6

data census - 6

census survey - 6

proprietorship - 6

proprietor - 6

establishment - 6

rural - 5

mobility - 5

earnings - 5

surveys censuses - 5

federal - 5

records census - 5

discriminatory - 5

imputation - 5

census records - 5

asian immigrants - 5

hiring - 5

immigrant workers - 5

census use - 5

census research - 5

refugee - 5

relocation - 4

midwest - 4

income neighborhoods - 4

medicaid - 4

mortality - 4

eligible - 4

ssa - 4

urban - 4

earner - 4

tax - 4

wealth - 4

adoption - 4

child - 4

datasets - 4

bias - 4

renter - 4

innovation - 4

estimating - 4

census 2020 - 4

enterprise - 4

worker - 4

occupation - 4

relocate - 3

neighborhood income - 3

prevalence - 3

enrolled - 3

census disclosure - 3

report - 3

state - 3

enrollee - 3

economic census - 3

assessed - 3

educated - 3

finance - 3

city - 3

suburbanization - 3

taxpayer - 3

parental - 3

welfare - 3

poorer - 3

matching - 3

disclosure - 3

parent - 3

associate - 3

network - 3

affluent - 3

innovate - 3

linked census - 3

specialization - 3

hire - 3

corporation - 3

founder - 3

individuals census - 3

financial - 3

tribe - 3

Viewing papers 41 through 50 of 109


  • Working Paper

    Determination of the 2020 U.S. Citizen Voting Age Population (CVAP) Using Administrative Records and Statistical Methodology Technical Report

    October 2020

    Working Paper Number:

    CES-20-33

    This report documents the efforts of the Census Bureau's Citizen Voting-Age Population (CVAP) Internal Expert Panel (IEP) and Technical Working Group (TWG) toward the use of multiple data sources to produce block-level statistics on the citizen voting-age population for use in enforcing the Voting Rights Act. It describes the administrative, survey, and census data sources used, and the four approaches developed for combining these data to produce CVAP estimates. It also discusses other aspects of the estimation process, including how records were linked across the multiple data sources, and the measures taken to protect the confidentiality of the data.
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  • Working Paper

    What Caused Racial Disparities in Particulate Exposure to Fall? New Evidence from the Clean Air Act and Satellite-Based Measures of Air Quality

    January 2020

    Working Paper Number:

    CES-20-02

    Racial differences in exposure to ambient air pollution have declined significantly in the United States over the past 20 years. This project links restricted-access Census Bureau microdata to newly available, spatially continuous high resolution measures of ambient particulate pollution (PM2.5) to examine the underlying causes and consequences of differences in black-white pollution exposures. We begin by decomposing differences in pollution exposure into components explained by observable population characteristics (e.g., income) versus those that remain unexplained. We then use quantile regression methods to show that a significant portion of the 'unexplained' convergence in black-white pollution exposure can be attributed to differential impacts of the Clean Air Act (CAA) in non-Hispanic African American and non-Hispanic white communities. Areas with larger black populations saw greater CAA-related declines in PM2.5 exposure. We show that the CAA has been the single largest contributor to racial convergence in PM2.5 pollution exposure in the U.S. since 2000 accounting for over 60 percent of the reduction.
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  • Working Paper

    Nonemployer Statistics by Demographics (NES-D): Exploring Longitudinal Consistency and Sub-national Estimates

    December 2019

    Working Paper Number:

    CES-19-34

    Until recently, the quinquennial Survey of Business Owners (SBO) was the only source of information for U.S. employer and nonemployer businesses by owner demographic characteristics such as race, ethnicity, sex and veteran status. Now, however, the Nonemployer Statistics by Demographics series (NES-D) will replace the SBO's nonemployer component with reliable, and more frequent (annual) business demographic estimates with no additional respondent burden, and at lower imputation rates and costs. NES-D is not a survey; rather, it exploits existing administrative and census records to assign demographic characteristics to the universe of approximately 25 million (as of 2016) nonemployer businesses. Although only in the second year of its research phase, NES-D is rapidly moving towards production, with a planned prototype or experimental version release of 2017 nonemployer data in 2020, followed by annual releases of the series. After the first year of research, we released a working paper (Luque et al., 2019) that assessed the viability of estimating nonemployer demographics exclusively with administrative records (AR) and census data. That paper used one year of data (2015) to produce preliminary tabulations of business counts at the national level. This year we expand that research in multiple ways by: i) examining the longitudinal consistency of administrative and census records coverage, and of our AR-based demographics estimates, ii) evaluating further coverage from additional data sources, iii) exploring estimates at the sub-national level, iv) exploring estimates by industrial sector, v) examining demographics estimates of business receipts as well as of counts, and vi) implementing imputation of missing demographic values. Our current results are consistent with the main findings in Luque et al. (2019), and show that high coverage and demographic assignment rates are not the exception, but the norm. Specifically, we find that AR coverage rates are high and stable over time for each of the three years we examine, 2014-2016. We are able to identify owners for approximately 99 percent of nonemployer businesses (excluding C-corporations), 92 to 93 percent of identified nonemployer owners have no missing demographics, and only about 1 percent are missing three or more demographic characteristics in each of the three years. We also find that our demographics estimates are stable over time, with expected small annual changes that are consistent with underlying population trends in the U.S.. Due to data limitations, these results do not include C-corporations, which represent only 2 percent of nonemployer businesses and 4 percent of receipts. Without added respondent burden and at lower imputation rates and costs, NES-D will provide high-quality business demographics estimates at a higher frequency (annual vs. every 5 years) than the SBO.
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  • Working Paper

    Predicting the Effect of Adding a Citizenship Question to the 2020 Census

    June 2019

    Working Paper Number:

    CES-19-18

    The addition of a citizenship question to the 2020 census could affect the self-response rate, a key driver of the cost and quality of a census. We find that citizenship question response patterns in the American Community Survey (ACS) suggest that it is a sensitive question when asked about administrative record noncitizens but not when asked about administrative record citizens. ACS respondents who were administrative record noncitizens in 2017 frequently choose to skip the question or answer that the person is a citizen. We predict the effect on self-response to the entire survey by comparing mail response rates in the 2010 ACS, which included a citizenship question, with those of the 2010 census, which did not have a citizenship question, among households in both surveys. We compare the actual ACS-census difference in response rates for households that may contain noncitizens (more sensitive to the question) with the difference for households containing only U.S. citizens. We estimate that the addition of a citizenship question will have an 8.0 percentage point larger effect on self-response rates in households that may have noncitizens relative to those with only U.S. citizens. Assuming that the citizenship question does not affect unit self-response in all-citizen households and applying the 8.0 percentage point drop to the 28.1 % of housing units potentially having at least one noncitizen would predict an overall 2.2 percentage point drop in self-response in the 2020 census, increasing costs and reducing the quality of the population count.
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  • Working Paper

    IMMIGRANT ENTREPRENEURS AND INNOVATION IN THE U.S. HIGH-TECH SECTOR

    February 2019

    Working Paper Number:

    CES-19-06

    We estimate differences in innovation behavior between foreign versus U.S.-born entrepreneurs in high-tech industries. Our data come from the Annual Survey of Entrepreneurs, a random sample of firms with detailed information on owner characteristics and innovation activities. We find uniformly higher rates of innovation in immigrant-owned firms for 15 of 16 different innovation measures; the only exception is for copyright/trademark. The immigrant advantage holds for older firms as well as for recent start-ups and for every level of the entrepreneur's education. The size of the estimated immigrant-native differences in product and process innovation activities rises with detailed controls for demographic and human capital characteristics but falls for R&D and patenting. Controlling for finance, motivations, and industry reduces all coefficients, but for most measures and specifications immigrants are estimated to have a sizable advantage in innovation.
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  • Working Paper

    Nonemployer Statistics by Demographics (NES-D): Using Administrative and Census Records Data in Business Statistics

    January 2019

    Working Paper Number:

    CES-19-01

    The quinquennial Survey of Business Owners or SBO provided the only comprehensive source of information in the United States on employer and nonemployer businesses by the sex, race, ethnicity and veteran status of the business owners. The annual Nonemployer Statistics series (NES) provides establishment counts and receipts for nonemployers but contains no demographic information on the business owners. With the transition of the employer component of the SBO to the Annual Business Survey, the Nonemployer Statistics by Demographics series or NES-D represents the continuation of demographics estimates for nonemployer businesses. NES-D will leverage existing administrative and census records to assign demographic characteristics to the universe of approximately 24 million nonemployer businesses (as of 2015). Demographic characteristics include key demographics measured by the SBO (sex, race, Hispanic origin and veteran status) as well as other demographics (age, place of birth and citizenship status) collected but not imputed by the SBO if missing. A spectrum of administrative and census data sources will provide the nonemployer universe and demographics information. Specifically, the nonemployer universe originates in the Business Register; the Census Numident will provide sex, age, place of birth and citizenship status; race and Hispanic origin information will be obtained from multiple years of the decennial census and the American Community Survey; and the Department of Veteran Affairs will provide administrative records data on veteran status. The use of blended data in this manner will make possible the production of NES-D, an annual series that will become the only source of detailed and comprehensive statistics on the scope, nature and activities of U.S. businesses with no paid employment by the demographic characteristics of the business owner. Using the 2015 vintage of nonemployers, initial results indicate that demographic information is available for the overwhelming majority of the universe of nonemployers. For instance, information on sex, age, place of birth and citizenship status is available for over 95 percent of the 24 million nonemployers while race and Hispanic origin are available for about 90 percent of them. These results exclude owners of C-corporations, which represent only 2 percent of nonemployer firms. Among other things, future work will entail imputation of missing demographics information (including that of C-corporations), testing the longitudinal consistency of the estimates, and expanding the set of characteristics beyond the demographics mentioned above. Without added respondent burden and at lower imputation rates and costs, NES-D will meet the needs of stakeholders as well as the economy as a whole by providing reliable estimates at a higher frequency (annual vs. every 5 years) and with a more timely dissemination schedule than the SBO.
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  • Working Paper

    Factors that Influence Change in Hispanic Identification: Evidence from Linked Decennial Census and American Community Survey Data

    October 2018

    Working Paper Number:

    CES-18-45

    This study explores patterns of ethnic boundary crossing as evidenced by changes in Hispanic origin responses across decennial census and survey data. We identify socioeconomic, cultural, and demographic factors associated with Hispanic response change. In addition, we assess whether changes in the Hispanic origin question between the 2000 and 2010 censuses influenced changes in Hispanic reporting. We use a unique large dataset that links a person's unedited responses to the Hispanic origin question across Census 2000, the 2010 Census and the 2006-2010 American Community Survey five-year file. We find that most of the individuals in the sample identified consistently as Hispanic regardless of changes in the wording of the Hispanic origin question. Individuals who changed in or out of a Hispanic identification, as well as those who consistently identified as non-Hispanic (of Hispanic ancestry), differed in socioeconomic and cultural characteristics from individuals who consistently reported as Hispanic. The likelihood of changing their Hispanic origin response is higher among U.S.-born individuals, those reporting mixed Hispanic and non-Hispanic ancestries, those who speak only English at home, and those who live in tracts that are predominantly non-Hispanic. Racial identification and detailed Hispanic background also influence changes in Hispanic origin responses. Finally, changes in mode and relationship to the reference person in the household are associated with changes in Hispanic origin responses, suggesting that data collection elements also can influence Hispanic origin response change.
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  • Working Paper

    The Opportunity Atlas: Mapping the Childhood Roots of Social Mobility

    September 2018

    Working Paper Number:

    CES-18-42R

    We construct a publicly available atlas of children's outcomes in adulthood by Census tract using anonymized longitudinal data covering nearly the entire U.S. population. For each tract, we estimate children's earnings distributions, incarceration rates, and other outcomes in adulthood by parental income, race, and gender. These estimates allow us to trace the roots of outcomes such as poverty and incarceration back to the neighborhoods in which children grew up. We find that children's outcomes vary sharply across nearby tracts: for children of parents at the 25th percentile of the income distribution, the standard deviation of mean household income at age 35 is $4,200 across tracts within counties. We illustrate how these tract-level data can provide insight into how neighborhoods shape the development of human capital and support local economic policy using two applications. First, we show that the estimates permit precise targeting of policies to improve economic opportunity by uncovering specific neighborhoods where certain subgroups of children grow up to have poor outcomes. Neighborhoods matter at a very granular level: conditional on characteristics such as poverty rates in a child's own Census tract, characteristics of tracts that are one mile away have little predictive power for a child's outcomes. Our historical estimates are informative predictors of outcomes even for children growing up today because neighborhood conditions are relatively stable over time. Second, we show that the observational estimates are highly predictive of neighborhoods' causal effects, based on a comparison to data from the Moving to Opportunity experiment and a quasi-experimental research design analyzing movers' outcomes. We then identify high-opportunity neighborhoods that are affordable to low-income families, providing an input into the design of affordable housing policies. Our measures of children's long-term outcomes are only weakly correlated with traditional proxies for local economic success such as rates of job growth, showing that the conditions that create greater upward mobility are not necessarily the same as those that lead to productive labor markets.
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  • Working Paper

    Race and Economic Opportunity in the United States: An Intergenerational Perspective

    September 2018

    Working Paper Number:

    CES-18-40R

    We study the sources of racial and ethnic disparities in income using de-identified longitudinal data covering nearly the entire U.S. population from 1989-2015. We document three sets of results. First, the intergenerational persistence of disparities varies substantially across racial groups. For example, Hispanic Americans are moving up significantly in the income distribution across generations because they have relatively high rates of intergenerational income mobility. In contrast, black Americans have substantially lower rates of upward mobility and higher rates of downward mobility than whites, leading to large income disparities that persist across generations. Conditional on parent income, the black-white income gap is driven entirely by large differences in wages and employment rates between black and white men; there are no such differences between black and white women. Second, differences in family characteristics such as parental marital status, education, and wealth explain very little of the black-white income gap conditional on parent income. Differences in ability also do not explain the patterns of intergenerational mobility we document. Third, the black-white gap persists even among boys who grow up in the same neighborhood. Controlling for parental income, black boys have lower incomes in adulthood than white boys in 99% of Census tracts. Both black and white boys have better outcomes in low-poverty areas, but black-white gaps are larger on average for boys who grow up in such neighborhoods. The few areas in which black-white gaps are relatively small tend to be low-poverty neighborhoods with low levels of racial bias among whites and high rates of father presence among blacks. Black males who move to such neighborhoods earlier in childhood earn more and are less likely to be incarcerated. However, fewer than 5% of black children grow up in such environments. These findings suggest that reducing the black-white income gap will require efforts whose impacts cross neighborhood and class lines and increase upward mobility specifically for black men.
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  • Working Paper

    Understanding the Quality of Alternative Citizenship Data Sources for the 2020 Census

    August 2018

    Working Paper Number:

    CES-18-38R

    This paper examines the quality of citizenship data in self-reported survey responses compared to administrative records and evaluates options for constructing an accurate count of resident U.S. citizens. Person-level discrepancies between survey-collected citizenship data and administrative records are more pervasive than previously reported in studies comparing survey and administrative data aggregates. Our results imply that survey-sourced citizenship data produce significantly lower estimates of the noncitizen share of the population than would be produced from currently available administrative records; both the survey-sourced and administrative data have shortcomings that could contribute to this difference. Our evidence is consistent with noncitizen respondents misreporting their own citizenship status and failing to report that of other household members. At the same time, currently available administrative records may miss some naturalizations and capture others with a delay. The evidence in this paper also suggests that adding a citizenship question to the 2020 Census would lead to lower self-response rates in households potentially containing noncitizens, resulting in higher fieldwork costs and a lower-quality population count.
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