100+ datasets found
  1. View on restrictions on AI replacing creative jobs in the U.S. 2023, by...

    • statista.com
    Updated Jul 9, 2025
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    Statista (2025). View on restrictions on AI replacing creative jobs in the U.S. 2023, by ethnicity [Dataset]. https://www.statista.com/statistics/1403235/opinion-government-restrictions-ai-replacing-writing-animation-jobs-us-ethnicity/
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    Dataset updated
    Jul 9, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Apr 5, 2023 - Apr 8, 2023
    Area covered
    United States
    Description

    The results of an April 2023 survey held in the United States show that ** percent of Hispanic respondents thought that governments should restrict AI's abilities to replace humans in creative and entertainment jobs, such as writers and animators. While ** percent of White respondents agreed, only ** percent of Black respondents thought the same. In the latter group, the majority had no opinion on this matter.

  2. Opinion on residency restrictions in Russia 2019, by ethnic group

    • statista.com
    Updated Jul 14, 2022
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    Statista (2022). Opinion on residency restrictions in Russia 2019, by ethnic group [Dataset]. https://www.statista.com/statistics/1155185/opinion-on-residency-restrictions-by-ethnicity-in-russia/
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    Dataset updated
    Jul 14, 2022
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Aug 22, 2019 - Aug 28, 2019
    Area covered
    Russia
    Description

    In August 2019, 40 and 39 percent of survey respondents in Russia stated that residence restrictions should be applied to Roma and Chinese ethnic groups, respectively. One quarter of the surveyed was against such limitations towards any ethnicity.

  3. What is the most common race/ethnicity?

    • hub.arcgis.com
    • gis-for-racialequity.hub.arcgis.com
    Updated Apr 14, 2020
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    Urban Observatory by Esri (2020). What is the most common race/ethnicity? [Dataset]. https://hub.arcgis.com/maps/2603a03fc55244c19f7f73d04cd53cea
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    Dataset updated
    Apr 14, 2020
    Dataset provided by
    Esrihttp://esri.com/
    Authors
    Urban Observatory by Esri
    Area covered
    Description

    Knowing the racial and ethnic composition of a community is often one of the first steps in understanding, serving, and advocating for various groups. This information can help enforce laws, policies, and regulations against discrimination based on race and ethnicity. These statistics can also help tailor services to accommodate cultural differences.This multi-scale map shows the most common race/ethnicity living within an area. Map opens at tract-level in Los Angeles, CA but has national coverage. Zoom out to see counties and states.This map uses these hosted feature layers containing the most recent American Community Survey data. These layers are part of the ArcGIS Living Atlas, and are updated every year when the American Community Survey releases new estimates, so values in the map always reflect the newest data available. The data on race were derived from answers to the question on race that was asked of individuals in the United States. The Census Bureau collects racial data in accordance with guidelines provided by the U.S. Office of Management and Budget (OMB), and these data are based on self-identification. The racial categories included in the census questionnaire generally reflect a social definition of race recognized in this country and not an attempt to define race biologically, anthropologically, or genetically. The categories represent a social-political construct designed for collecting data on the race and ethnicity of broad population groups in this country, and are not anthropologically or scientifically based. Learn more here.

  4. Quality of ethnicity data in health-related administrative data sources...

    • cy.ons.gov.uk
    • ons.gov.uk
    xlsx
    Updated May 3, 2024
    + more versions
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    Office for National Statistics (2024). Quality of ethnicity data in health-related administrative data sources where population was restricted to those with data for all sociodemographic characteristics [Dataset]. https://cy.ons.gov.uk/peoplepopulationandcommunity/healthandsocialcare/healthinequalities/datasets/qualityofethnicitydatainhealthrelatedadministrativedatasourceswherepopulationwasrestrictedtothosewithdataforallsociodemographiccharacteristics
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    xlsxAvailable download formats
    Dataset updated
    May 3, 2024
    Dataset provided by
    Office for National Statisticshttp://www.ons.gov.uk/
    License

    Open Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
    License information was derived automatically

    Description

    Agreement rates between ethnicity data recorded in health-related administrative data sources with Census 2021 by sociodemographic characteristics, where population was restricted to those with data for all socio-demographic characteristics.

  5. Replication data for: Race, Ethnicity, and Discriminatory Zoning

    • openicpsr.org
    Updated Jul 1, 2016
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    Allison Shertzer; Tate Twinam; Randall P. Walsh (2016). Replication data for: Race, Ethnicity, and Discriminatory Zoning [Dataset]. http://doi.org/10.3886/E113622V1
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    Dataset updated
    Jul 1, 2016
    Dataset provided by
    American Economic Associationhttp://www.aeaweb.org/
    Authors
    Allison Shertzer; Tate Twinam; Randall P. Walsh
    Description

    Zoning policies can have marked impacts on the spatial distribution of people and land use, yet there is little systematic evidence on their origin. Investigating the causes of these regulations is complicated by the fact that land use and zoning have been co-evolving for nearly a century. We employ a novel approach to overcome this challenge, studying the factors underpinning the introduction of comprehensive zoning in Chicago. We find evidence consistent with a precursor to exclusionary zoning as well as support for the hypothesis that industrial use zoning was disproportionately allocated to neighborhoods populated by ethnic and racial minorities.

  6. Restriction of screen time among children in the U.S. 2018, by ethnicity

    • statista.com
    Updated Feb 14, 2019
    + more versions
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    Statista (2019). Restriction of screen time among children in the U.S. 2018, by ethnicity [Dataset]. https://www.statista.com/statistics/804141/share-adults-limit-screen-time-children-usa-ethnicity/
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    Dataset updated
    Feb 14, 2019
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Jan 11, 2018 - Jan 16, 2018
    Area covered
    United States
    Description

    The statistic presents data on the share of adults who have taken steps to limit the amount of screen time their child is allowed in the United States as of January 2018, by ethnicity. During the survey, 29 percent of Hispanic respondents stated that they had taken a lot of steps to limit the amount of time their child is allowed.

  7. d

    COVID-19 - Vaccinations by Region, Age, and Race-Ethnicity - Historical

    • catalog.data.gov
    • healthdata.gov
    • +3more
    Updated Dec 16, 2023
    + more versions
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    data.cityofchicago.org (2023). COVID-19 - Vaccinations by Region, Age, and Race-Ethnicity - Historical [Dataset]. https://catalog.data.gov/dataset/covid-19-vaccinations-by-region-age-and-race-ethnicity
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    Dataset updated
    Dec 16, 2023
    Dataset provided by
    data.cityofchicago.org
    Description

    NOTE: This dataset has been retired and marked as historical-only. The recommended dataset to use in its place is https://data.cityofchicago.org/Health-Human-Services/COVID-19-Vaccination-Coverage-Region-HCEZ-/5sc6-ey97. COVID-19 vaccinations administered to Chicago residents by Healthy Chicago Equity Zones (HCEZ) based on the reported address, race-ethnicity, and age group of the person vaccinated, as provided by the medical provider in the Illinois Comprehensive Automated Immunization Registry Exchange (I-CARE). Healthy Chicago Equity Zones is an initiative of the Chicago Department of Public Health to organize and support hyperlocal, community-led efforts that promote health and racial equity. Chicago is divided into six HCEZs. Combinations of Chicago’s 77 community areas make up each HCEZ, based on geography. For more information about HCEZs including which community areas are in each zone see: https://data.cityofchicago.org/Health-Human-Services/Healthy-Chicago-Equity-Zones/nk2j-663f Vaccination Status Definitions: ·People with at least one vaccine dose: Number of people who have received at least one dose of any COVID-19 vaccine, including the single-dose Johnson & Johnson COVID-19 vaccine. ·People with a completed vaccine series: Number of people who have completed a primary COVID-19 vaccine series. Requirements vary depending on age and type of primary vaccine series received. ·People with a bivalent dose: Number of people who received a bivalent (updated) dose of vaccine. Updated, bivalent doses became available in Fall 2022 and were created with the original strain of COVID-19 and newer Omicron variant strains. Weekly cumulative totals by vaccination status are shown for each combination of race-ethnicity and age group within an HCEZ. Note that each HCEZ has a row where HCEZ is “Citywide” and each HCEZ has a row where age is "All" so care should be taken when summing rows. Vaccinations are counted based on the date on which they were administered. Weekly cumulative totals are reported from the week ending Saturday, December 19, 2020 onward (after December 15, when vaccines were first administered in Chicago) through the Saturday prior to the dataset being updated. Population counts are from the U.S. Census Bureau American Community Survey (ACS) 2017-2021 5-year estimates. Coverage percentages are calculated based on the cumulative number of people in each population subgroup (age group by race-ethnicity within an HCEZ) who have each vaccination status as of the date, divided by the estimated number of people in that subgroup. Actual counts may exceed population estimates and lead to >100% coverage, especially in small race-ethnicity subgroups of each age group within an HCEZ. All coverage percentages are capped at 99%. All data are provisional and subject to change. Information is updated as additional details are received and it is, in fact, very common for recent dates to be incomplete and to be updated as time goes on. At any given time, this dataset reflects data currently known to CDPH. Numbers in this dataset may differ from other public sources due to when data are reported and how City of Chicago boundaries are defined. CDPH uses the most complete data available to estimate COVID-19 vaccination coverage among Chicagoans, but there are several limitations that impact its estimates. Data reported in I-CARE only includes doses administered in Illinois and some doses administered outside of Illinois reported historically by Illinois providers. Doses administered by the federal Bureau of Prisons and Department of Defense are also not currently reported in I-CARE. The Veterans Health Administration began reporting doses in I-CARE beginning September 2022. Due to people receiving vaccinations that are not recorded in I-CARE that can be linked to their record, such as someone receiving a vaccine dose in another state, the number of people with a completed series or a booster dose is underesti

  8. d

    Data from: The Politics and Economics of Official Ethnic Discrimination: A...

    • search.dataone.org
    • dataverse.harvard.edu
    Updated Nov 22, 2023
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    Sorens, Jason (2023). The Politics and Economics of Official Ethnic Discrimination: A Global Statistical Analysis, 1950–2003 [Dataset]. http://doi.org/10.7910/DVN/E9EEO3
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    Dataset updated
    Nov 22, 2023
    Dataset provided by
    Harvard Dataverse
    Authors
    Sorens, Jason
    Description

    It is argued that ethnic competition, triggers for ethnic mobilization, and political institutions together affect changes in government-imposed political and economic restrictions on ethnic groups worldwide. Due to the fact that the only existing comparative data set on ethnic discrimination, produced by the Minorities at Risk project, uses discrimination as a criterion for including ethnic groups, a new data set of 620 additional groups has been created to predict the selection process through a full-information, maximum-likelihood Heckman probit model, but selection bias is found not to affect the results. Discrimination is modeled as a dynamic Markov process, and central and regional government institutions, economic conditions, and minority group characteristics are found to influence the initiation and continuation of discriminatory policies.

  9. IPUMS Contextual Determinants of Health (CDOH) Race and Ethnicity Measure:...

    • icpsr.umich.edu
    Updated Feb 25, 2025
    + more versions
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    Kamp Dush, Claire M.; Manning, Wendy D.; Van Riper, David (2025). IPUMS Contextual Determinants of Health (CDOH) Race and Ethnicity Measure: Income Inequity by County, United States, 2005-2022 [Dataset]. http://doi.org/10.3886/ICPSR39241.v1
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    Dataset updated
    Feb 25, 2025
    Dataset provided by
    Inter-university Consortium for Political and Social Researchhttps://www.icpsr.umich.edu/web/pages/
    Authors
    Kamp Dush, Claire M.; Manning, Wendy D.; Van Riper, David
    License

    https://www.icpsr.umich.edu/web/ICPSR/studies/39241/termshttps://www.icpsr.umich.edu/web/ICPSR/studies/39241/terms

    Time period covered
    2005 - 2022
    Area covered
    United States
    Description

    The IPUMS Contextual Determinants of Health (CDOH) data series provides access to measures of disparities, policies, and counts, by state or county, for historically marginalized populations in the United States including Black, Asian, Hispanic/Latina/o/e/x, and LGBTQ+ persons, and women. The IPUMS CDOH data are made available through ICPSR/DSDR for merging with the National Couples' Health and Time Study (NCHAT), United States, 2020-2021 (ICPSR 38417) by approved restricted data researchers. All other researchers can access the IPUMS CDOH data via the IPUMS CDOH website. Unlike other IPUMS products, the CDOH data are organized into multiple categories related to Race and Ethnicity, Sexual and Gender Minority, Gender, and Politics. The measures were created from a wide variety of data sources (e.g., IPUMS NHGIS, the Census Bureau, the Bureau of Labor Statistics, the Movement Advancement Project, and Myers Abortion Facility Database). Measures are currently available for states or counties from approximately 2015 to 2020. The Race and Ethnicity measure in this release is an indicator of income inequity which is measured using the index of concentration at the extremes (ICE). ICE is a measure of social polarization within a particular geographic unit. It shows whether people or households in a geographic unit are concentrated in privileged or deprived extremes. The privileged group in this study is the number of households with a householder identifying as White alone, not Hispanic or Latino, with an income equal to or greater than $100,000. The deprived group in this study is the number of households with a householder identifying as a different race/ethnic group (e.g., Black alone, Asian alone, Hispanic or Latino), with an income equal to or less than $25,000. To work with the IPUMS CDOH data, researchers will need to use the variable MATCH_ID to merge the data in DS1 with NCHAT surveys within the virtual data enclave (VDE).

  10. g

    Charay ethnicity : documentation of customary rules | gimi9.com

    • gimi9.com
    Updated Mar 23, 2025
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    (2025). Charay ethnicity : documentation of customary rules | gimi9.com [Dataset]. https://gimi9.com/dataset/mekong_d17f5656-eecf-5d2a-84a3-9b8c6f421705
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    Dataset updated
    Mar 23, 2025
    Description

    alternative_dispute_resolution ethnic_minorities_and_indigenous_people ethnic_minorities_and_indigenous_people_policy_and_rights legal_and_judicial_reform

  11. d

    Repository URL

    • datadiscoverystudio.org
    resource url
    Updated 2009
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    (2009). Repository URL [Dataset]. http://datadiscoverystudio.org/geoportal/rest/metadata/item/149d49ffdf4f436a90664fbe83bf5942/html
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    resource urlAvailable download formats
    Dataset updated
    2009
    Area covered
    Description

    Link Function: information

  12. o

    Phnong Ethnicity Documentation of Customary Rules - Library records OD...

    • data.opendevelopmentmekong.net
    Updated Jun 14, 2015
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    (2015). Phnong Ethnicity Documentation of Customary Rules - Library records OD Mekong Datahub [Dataset]. https://data.opendevelopmentmekong.net/dataset/phnong-ethnicity-documentation-of-customary-rules
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    Dataset updated
    Jun 14, 2015
    Description

    Pu-Trou village is an old indigenous Phnong village located in O’Rang district in the Mondulkiri basal highland. It is home to 320 villagers, including 120 women, and comprises 64 Phnong ethnic families. Pu-Trou village is currently situated within the Seima wildlife reservation area bordering Pu-Rong, O’Chrar, Sre Phrea and Sre Ambel villages. The villagers mainly subsist on traditional farm cultivation, rice farming and collection of non-timber products such as vines and resin for use and sale. Villagers live as a small tight-knit community and maintain their historic identity, traditions, culture and belief systems.

  13. u

    American Community Survey

    • gstore.unm.edu
    csv, geojson, gml +5
    Updated Mar 6, 2020
    + more versions
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    Earth Data Analysis Center (2020). American Community Survey [Dataset]. https://gstore.unm.edu/apps/rgis/datasets/474fef30-414f-4269-b37a-5103c84b141f/metadata/FGDC-STD-001-1998.html
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    json(5), gml(5), shp(5), kml(5), csv(5), xls(5), zip(1), geojson(5)Available download formats
    Dataset updated
    Mar 6, 2020
    Dataset provided by
    Earth Data Analysis Center
    Time period covered
    2018
    Area covered
    New Mexico, West Bounding Coordinate -109.05017 East Bounding Coordinate -103.00196 North Bounding Coordinate 37.000293 South Bounding Coordinate 31.33217
    Description

    A broad and generalized selection of 2014-2018 US Census Bureau 2018 5-year American Community Survey race, ethnicity and citizenship data estimates, obtained via Census API and joined to the appropriate geometry (in this case, New Mexico counties). The selection, while not comprehensive, provides a first-level characterization of the race and/or ethnicity of populations in New Mexico, along with citizenship status and nativity. The determination of which estimates to include was based upon level of interest and providing a manageable dataset for users. The U.S. Census Bureau's American Community Survey (ACS) is a nationwide, continuous survey designed to provide communities with reliable and timely demographic, housing, social, and economic data every year. The ACS collects long-form-type information throughout the decade rather than only once every 10 years. As in the decennial census, strict confidentiality laws protect all information that could be used to identify individuals or households.The ACS combines population or other data from multiple years to produce reliable numbers for small counties, neighborhoods, and other local areas. To provide information for communities each year, the ACS provides 1-, 3-, and 5-year estimates. ACS 5-year estimates (multiyear estimates) are “period” estimates that represent data collected over a 60-month period of time (as opposed to “point-in-time” estimates, such as the decennial census, that approximate the characteristics of an area on a specific date). ACS data are released in the year immediately following the year in which they are collected. ACS estimates based on data collected from 2009–2014 should not be called “2009” or “2014” estimates. Multiyear estimates should be labeled to indicate clearly the full period of time. The primary advantage of using multiyear estimates is the increased statistical reliability of the data for less populated areas and small population subgroups. Data are based on a sample and are subject to sampling variability. The degree of uncertainty for an estimate arising from sampling variability is represented through the use of a margin of error. While each full Data Profile contains margin of error (MOE) information, this dataset does not. Those individuals requiring more complete data are directed to download the more detailed datasets from the ACS American FactFinder website. This dataset is organized by New Mexico county boundaries, based on TIGER/Line Files: shapefiles and related database files (.dbf) that are an extract of selected geographic and cartographic information from the U.S. Census Bureau's Master Address File / Topologically Integrated Geographic Encoding and Referencing (MAF/TIGER) Database.

  14. COVID-19 Case Surveillance Restricted Access Detailed Data

    • data.cdc.gov
    • healthdata.gov
    • +1more
    application/rdfxml +5
    Updated Nov 20, 2020
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    CDC Data, Analytics and Visualization Task Force (2020). COVID-19 Case Surveillance Restricted Access Detailed Data [Dataset]. https://data.cdc.gov/Case-Surveillance/COVID-19-Case-Surveillance-Restricted-Access-Detai/mbd7-r32t
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    application/rssxml, xml, json, csv, tsv, application/rdfxmlAvailable download formats
    Dataset updated
    Nov 20, 2020
    Dataset provided by
    Centers for Disease Control and Preventionhttp://www.cdc.gov/
    Authors
    CDC Data, Analytics and Visualization Task Force
    License

    https://www.usa.gov/government-workshttps://www.usa.gov/government-works

    Description

    Note: Reporting of new COVID-19 Case Surveillance data will be discontinued July 1, 2024, to align with the process of removing SARS-CoV-2 infections (COVID-19 cases) from the list of nationally notifiable diseases. Although these data will continue to be publicly available, the dataset will no longer be updated.

    Authorizations to collect certain public health data expired at the end of the U.S. public health emergency declaration on May 11, 2023. The following jurisdictions discontinued COVID-19 case notifications to CDC: Iowa (11/8/21), Kansas (5/12/23), Kentucky (1/1/24), Louisiana (10/31/23), New Hampshire (5/23/23), and Oklahoma (5/2/23). Please note that these jurisdictions will not routinely send new case data after the dates indicated. As of 7/13/23, case notifications from Oregon will only include pediatric cases resulting in death.

    This case surveillance publicly available dataset has 33 elements for all COVID-19 cases shared with CDC and includes demographics, geography (county and state of residence), any exposure history, disease severity indicators and outcomes, and presence of any underlying medical conditions and risk behaviors. This dataset requires a registration process and a data use agreement.

    CDC has three COVID-19 case surveillance datasets:

    Requesting Access to the COVID-19 Case Surveillance Restricted Access Detailed Data Please review the following documents to determine your interest in accessing the COVID-19 Case Surveillance Restricted Access Detailed Data file: 1) CDC COVID-19 Case Surveillance Restricted Access Detailed Data: Summary, Guidance, Limitations Information, and Restricted Access Data Use Agreement Information 2) Data Dictionary for the COVID-19 Case Surveillance Restricted Access Detailed Data The next step is to complete the Registration Information and Data Use Restrictions Agreement (RIDURA). Once complete, CDC will review your agreement. After access is granted, Ask SRRG (eocevent394@cdc.gov) will email you information about how to access the data through GitHub. If you have questions about obtaining access, email eocevent394@cdc.gov.

    Overview

    The COVID-19 case surveillance database includes individual-level data reported to U.S. states and autonomous reporting entities, including New York City and the District of Columbia (D.C.), as well as U.S. territories and affiliates. On April 5, 2020, COVID-19 was added to the Nationally Notifiable Condition List and classified as “immediately notifiable, urgent (within 24 hours)” by a Council of State and Territorial Epidemiologists (CSTE) Interim Position Statement (Interim-20-ID-01). CSTE updated the position statement on August 5, 2020, to clarify the interpretation of antigen detection tests and serologic test results within the case classification (Interim-20-ID-02). The statement also recommended that all states and territories enact laws to make COVID-19 reportable in their jurisdiction, and that jurisdictions conducting surveillance should submit case notifications to CDC. COVID-19 case surveillance data are collected by jurisdictions and reported voluntarily to CDC.

    COVID-19 case surveillance data are collected by jurisdictions and are shared voluntarily with CDC. For more information, visit: https://www.cdc.gov/coronavirus/2019-ncov/covid-data/about-us-cases-deaths.html.

    The deidentified data in the restricted access dataset include demographic characteristics, state and county of residence, any exposure history, disease severity indicators and outcomes, clinical data, laboratory diagnostic test results, and comorbidities.

    All data elements can be found on the COVID-19 case report form located at www.cdc.gov/coronavirus/2019-ncov/downloads/pui-form.pdf.

    COVID-19 case reports have been routinely submitted using standardized case reporting forms.

    On April 5, 2020, CSTE released an Interim Position Statement with national surveillance case definitions for COVID-19 included. Current versions of these case definitions are available here: https://ndc.services.cdc.gov/case-definitions/coronavirus-disease-2019-2021/.

    CSTE updated the position statement on August 5, 2020, to clarify the interpretation of antigen detection tests and serologic test results within the case classification. All cases reported on or after were requested to be shared by public health departments to CDC using the standardized case definitions for lab-confirmed or probable cases.

    On May 5, 2020, the standardized case reporting form was revised. Case reporting using this new form is ongoing among U.S. states and territories.

    Data are Considered Provisional

    • The COVID-19 case surveillance data are dynamic; case reports can be modified at any time by the jurisdictions sharing COVID-19 data with CDC. CDC may update prior cases shared with CDC based on any updated information from jurisdictions. For instance, as new information is gathered about previously reported cases, health departments provide updated data to CDC. As more information and data become available, analyses might find changes in surveillance data and trends during a previously reported time window. Data may also be shared late with CDC due to the volume of COVID-19 cases.
    • Annual finalized data: To create the final NNDSS data used in the annual tables, CDC works carefully with the reporting jurisdictions to reconcile the data received during the year until each state or territorial epidemiologist confirms that the data from their area are correct.

    Access Addressing Gaps in Public Health Reporting of Race and Ethnicity for COVID-19, a report from the Council of State and Territorial Epidemiologists, to better understand the challenges in completing race and ethnicity data for COVID-19 and recommendations for improvement.

    Data Limitations

    To learn more about the limitations in using case surveillance data, visit FAQ: COVID-19 Data and Surveillance.

    Data Quality Assurance Procedures

    CDC’s Case Surveillance Section routinely performs data quality assurance procedures (i.e., ongoing corrections and logic checks to address data errors). To date, the following data cleaning steps have been implemented:

    • Questions that have been left unanswered (blank) on the case report form are reclassified to a Missing value, if applicable to the question. For example, in the question "Was the individual hospitalized?" where the possible answer choices include "Yes," "No," or "Unknown," the blank value is recoded to "Missing" because the case report form did not include a response to the question.
    • Logic checks are performed for date data. If an illogical date has been provided, CDC reviews the data with the reporting jurisdiction. For example, if a symptom onset date in the future is reported to CDC, this value is set to null until the reporting jurisdiction updates the date appropriately.
    • Additional data quality processing to recode free text data is ongoing. Data on symptoms, race, ethnicity, and healthcare worker status have been prioritized.

    Data Suppression

    To prevent release of data that could be used to identify people, data cells are suppressed for low frequency (<11 COVID-19 case records with a given values). Suppression includes low frequency combinations of case month, geographic characteristics (county and state of residence), and demographic characteristics (sex, age group, race, and ethnicity). Suppressed values are re-coded to the NA answer option; records with data suppression are never removed.

    Additional COVID-19 Data

    COVID-19 data are available to the public as summary or aggregate count files, including total counts of cases and deaths by state and by county. These and other COVID-19 data are available from multiple public locations:

  15. N

    Median Household Income by Racial Categories in Industry, CA (, in 2023...

    • neilsberg.com
    csv, json
    Updated Mar 1, 2025
    + more versions
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    Neilsberg Research (2025). Median Household Income by Racial Categories in Industry, CA (, in 2023 inflation-adjusted dollars) [Dataset]. https://www.neilsberg.com/research/datasets/e0a94d73-f665-11ef-a994-3860777c1fe6/
    Explore at:
    csv, jsonAvailable download formats
    Dataset updated
    Mar 1, 2025
    Dataset authored and provided by
    Neilsberg Research
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    City of Industry, California
    Variables measured
    Median Household Income for Asian Population, Median Household Income for Black Population, Median Household Income for White Population, Median Household Income for Some other race Population, Median Household Income for Two or more races Population, Median Household Income for American Indian and Alaska Native Population, Median Household Income for Native Hawaiian and Other Pacific Islander Population
    Measurement technique
    The data presented in this dataset is derived from the latest U.S. Census Bureau American Community Survey (ACS) 2019-2023 5-Year Estimates. To portray the median household income within each racial category idetified by the US Census Bureau, we conducted an initial analysis and categorization of the data. Subsequently, we adjusted these figures for inflation using the Consumer Price Index retroactive series via current methods (R-CPI-U-RS). It is important to note that the median household income estimates exclusively represent the identified racial categories and do not incorporate any ethnicity classifications. Households are categorized, and median incomes are reported based on the self-identified race of the head of the household. For additional information about these estimations, please contact us via email at research@neilsberg.com
    Dataset funded by
    Neilsberg Research
    Description
    About this dataset

    Context

    The dataset presents the median household income across different racial categories in Industry. It portrays the median household income of the head of household across racial categories (excluding ethnicity) as identified by the Census Bureau. The dataset can be utilized to gain insights into economic disparities and trends and explore the variations in median houshold income for diverse racial categories.

    Key observations

    Based on our analysis of the distribution of Industry population by race & ethnicity, the population is predominantly Some other race. This particular racial category constitutes the majority, accounting for 38.67% of the total residents in Industry. Notably, the median household income for Some other race households is not available from the U.S. Census Bureau, possibly due to insufficient sample size, confidentiality or privacy constraints.. Interestingly, despite the Some other race population being the most populous, there is no income data available in the latest American Community Survey for it. Based on analysis from all of the data that is available, it is worth noting that White households actually reports the highest median household income, with a median income of $52,143. This reveals that, while Some other races may be the most numerous in Industry, White households experience greater economic prosperity in terms of median household income.

    Content

    When available, the data consists of estimates from the U.S. Census Bureau American Community Survey (ACS) 2019-2023 5-Year Estimates.

    Racial categories include:

    • White
    • Black or African American
    • American Indian and Alaska Native
    • Asian
    • Native Hawaiian and Other Pacific Islander
    • Some other race
    • Two or more races (multiracial)

    Variables / Data Columns

    • Race of the head of household: This column presents the self-identified race of the household head, encompassing all relevant racial categories (excluding ethnicity) applicable in Industry.
    • Median household income: Median household income, adjusting for inflation, presented in 2023-inflation-adjusted dollars

    Good to know

    Margin of Error

    Data in the dataset are based on the estimates and are subject to sampling variability and thus a margin of error. Neilsberg Research recommends using caution when presening these estimates in your research.

    Custom data

    If you do need custom data for any of your research project, report or presentation, you can contact our research staff at research@neilsberg.com for a feasibility of a custom tabulation on a fee-for-service basis.

    Inspiration

    Neilsberg Research Team curates, analyze and publishes demographics and economic data from a variety of public and proprietary sources, each of which often includes multiple surveys and programs. The large majority of Neilsberg Research aggregated datasets and insights is made available for free download at https://www.neilsberg.com/research/.

    Recommended for further research

    This dataset is a part of the main dataset for Industry median household income by race. You can refer the same here

  16. s

    RIPA police stop data - race of persons stopped

    • data.sandiego.gov
    + more versions
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    RIPA police stop data - race of persons stopped [Dataset]. https://data.sandiego.gov/datasets/police-ripa-race/
    Explore at:
    csv csv is tabular data. excel, google docs, libreoffice calc or any plain text editor will open files with this format. learn moreAvailable download formats
    Description

    The race of persons stopped by the San Diego Police Department, as perceived by the officer conducting the stop. This data is collected according to requirements set forth in Government Code section 12525.5 that was enacted as a result of the Racial and Identity Profiling Act of 2015 (AB 953), also known as RIPA. The file contains one row per perceived race per person stopped by Police. An officer may perceive more than one race for a person stopped. The person stopped is uniquely identified in the pid field, and the stop is uniquely identified in the stop_id field. These two fields can be used to join this dataset to the other RIPA datasets available at the following links: (Deprecated) Actions taken Contraband and/or evidence found Disability of persons Force Actions (Deprecated) Gender of persons Non-Force Actions Basis for property seizure Property seized Basis for searches conducted Reason for stop Result of stop Stop details For more information about RIPA regulations, see the California Code of Regulations final text.

  17. Ethnic Collective Action in Contemporary Urban United States -- Data on...

    • icpsr.umich.edu
    ascii, delimited, r +3
    Updated Mar 4, 2015
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    Olzak, Susan (2015). Ethnic Collective Action in Contemporary Urban United States -- Data on Conflicts and Protests, 1954-1992 [Dataset]. http://doi.org/10.3886/ICPSR34341.v1
    Explore at:
    delimited, stata, sas, ascii, spss, rAvailable download formats
    Dataset updated
    Mar 4, 2015
    Dataset provided by
    Inter-university Consortium for Political and Social Researchhttps://www.icpsr.umich.edu/web/pages/
    Authors
    Olzak, Susan
    License

    https://www.icpsr.umich.edu/web/ICPSR/studies/34341/termshttps://www.icpsr.umich.edu/web/ICPSR/studies/34341/terms

    Time period covered
    1954 - 1992
    Area covered
    United States
    Description

    This project seeks to identify sources of ethnic and racial conflict and protest in urban America from 1954 through 1992. The data on collective events are coded using The New York Times. Detailed coding rules produced a chronological dataset that allows researchers to: Analyze the location and timing of both conflicts (confrontations between two or more ethnic populations) and protests (marches, mass meetings, demonstrations on behalf of one ethnic group, expressing grievances related to discrimination or racial policy). Specifically analyze a type of protest (e.g., civil rights movement activity, or urban race riots) and the potential dynamic relationship of different types of protests and conflicts. Identify any ethnic, nationality, or racial characteristics of participants who were the targets and/or instigators of each protest and conflict. Analyze information on each event's location, size, targets, police presence, arrests, damage or injuries, and the content of claims directed against government authorities, police, and other groups.

  18. N

    Median Household Income by Racial Categories in Leslie, GA (, in 2023...

    • neilsberg.com
    csv, json
    Updated Mar 1, 2025
    + more versions
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    Neilsberg Research (2025). Median Household Income by Racial Categories in Leslie, GA (, in 2023 inflation-adjusted dollars) [Dataset]. https://www.neilsberg.com/insights/leslie-ga-median-household-income-by-race/
    Explore at:
    json, csvAvailable download formats
    Dataset updated
    Mar 1, 2025
    Dataset authored and provided by
    Neilsberg Research
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Leslie, Georgia
    Variables measured
    Median Household Income for Asian Population, Median Household Income for Black Population, Median Household Income for White Population, Median Household Income for Some other race Population, Median Household Income for Two or more races Population, Median Household Income for American Indian and Alaska Native Population, Median Household Income for Native Hawaiian and Other Pacific Islander Population
    Measurement technique
    The data presented in this dataset is derived from the latest U.S. Census Bureau American Community Survey (ACS) 2019-2023 5-Year Estimates. To portray the median household income within each racial category idetified by the US Census Bureau, we conducted an initial analysis and categorization of the data. Subsequently, we adjusted these figures for inflation using the Consumer Price Index retroactive series via current methods (R-CPI-U-RS). It is important to note that the median household income estimates exclusively represent the identified racial categories and do not incorporate any ethnicity classifications. Households are categorized, and median incomes are reported based on the self-identified race of the head of the household. For additional information about these estimations, please contact us via email at research@neilsberg.com
    Dataset funded by
    Neilsberg Research
    Description
    About this dataset

    Context

    The dataset presents the median household income across different racial categories in Leslie. It portrays the median household income of the head of household across racial categories (excluding ethnicity) as identified by the Census Bureau. The dataset can be utilized to gain insights into economic disparities and trends and explore the variations in median houshold income for diverse racial categories.

    Key observations

    Based on our analysis of the distribution of Leslie population by race & ethnicity, the population is predominantly Black or African American. This particular racial category constitutes the majority, accounting for 50.20% of the total residents in Leslie. Notably, the median household income for Black or African American households is not available from the U.S. Census Bureau, possibly due to insufficient sample size, confidentiality or privacy constraints.. Interestingly, despite the Black or African American population being the most populous, there is no income data available in the latest American Community Survey for it. Based on analysis from all of the data that is available, it is worth noting that White households actually reports the highest median household income, with a median income of $75,313. This reveals that, while Black or African Americans may be the most numerous in Leslie, White households experience greater economic prosperity in terms of median household income.

    Content

    When available, the data consists of estimates from the U.S. Census Bureau American Community Survey (ACS) 2019-2023 5-Year Estimates.

    Racial categories include:

    • White
    • Black or African American
    • American Indian and Alaska Native
    • Asian
    • Native Hawaiian and Other Pacific Islander
    • Some other race
    • Two or more races (multiracial)

    Variables / Data Columns

    • Race of the head of household: This column presents the self-identified race of the household head, encompassing all relevant racial categories (excluding ethnicity) applicable in Leslie.
    • Median household income: Median household income, adjusting for inflation, presented in 2023-inflation-adjusted dollars

    Good to know

    Margin of Error

    Data in the dataset are based on the estimates and are subject to sampling variability and thus a margin of error. Neilsberg Research recommends using caution when presening these estimates in your research.

    Custom data

    If you do need custom data for any of your research project, report or presentation, you can contact our research staff at research@neilsberg.com for a feasibility of a custom tabulation on a fee-for-service basis.

    Inspiration

    Neilsberg Research Team curates, analyze and publishes demographics and economic data from a variety of public and proprietary sources, each of which often includes multiple surveys and programs. The large majority of Neilsberg Research aggregated datasets and insights is made available for free download at https://www.neilsberg.com/research/.

    Recommended for further research

    This dataset is a part of the main dataset for Leslie median household income by race. You can refer the same here

  19. f

    Table_1_Operationalizing racialized exposures in historical research on...

    • frontiersin.figshare.com
    docx
    Updated Jul 6, 2023
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    Marie Kaniecki; Nicole Louise Novak; Sarah Gao; Sioban Harlow; Alexandra Minna Stern (2023). Table_1_Operationalizing racialized exposures in historical research on anti-Asian racism and health: a comparison of two methods.DOCX [Dataset]. http://doi.org/10.3389/fpubh.2023.983434.s001
    Explore at:
    docxAvailable download formats
    Dataset updated
    Jul 6, 2023
    Dataset provided by
    Frontiers
    Authors
    Marie Kaniecki; Nicole Louise Novak; Sarah Gao; Sioban Harlow; Alexandra Minna Stern
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    BackgroundAddressing contemporary anti-Asian racism and its impacts on health requires understanding its historical roots, including discriminatory restrictions on immigration, citizenship, and land ownership. Archival secondary data such as historical census records provide opportunities to quantitatively analyze structural dynamics that affect the health of Asian immigrants and Asian Americans. Census data overcome weaknesses of other data sources, such as small sample size and aggregation of Asian subgroups. This article explores the strengths and limitations of early twentieth-century census data for understanding Asian Americans and structural racism.MethodsWe used California census data from three decennial census spanning 1920–1940 to compare two criteria for identifying Asian Americans: census racial categories and Asian surname lists (Chinese, Indian, Japanese, Korean, and Filipino) that have been validated in contemporary population data. This paper examines the sensitivity and specificity of surname classification compared to census-designated “color or race” at the population level.ResultsSurname criteria were found to be highly specific, with each of the five surname lists having a specificity of over 99% for all three census years. The Chinese surname list had the highest sensitivity (ranging from 0.60–0.67 across census years), followed by the Indian (0.54–0.61) and Japanese (0.51–0.62) surname lists. Sensitivity was much lower for Korean (0.40–0.45) and Filipino (0.10–0.21) surnames. With the exception of Indian surnames, the sensitivity values of surname criteria were lower for the 1920–1940 census data than those reported for the 1990 census. The extent of the difference in sensitivity and trends across census years vary by subgroup.DiscussionSurname criteria may have lower sensitivity in detecting Asian subgroups in historical data as opposed to contemporary data as enumeration procedures for Asians have changed across time. We examine how the conflation of race, ethnicity, and nationality in the census could contribute to low sensitivity of surname classification compared to census-designated “color or race.” These results can guide decisions when operationalizing race in the context of specific research questions, thus promoting historical quantitative study of Asian American experiences. Furthermore, these results stress the need to situate measures of race and racism in their specific historical context.

  20. S

    2023 Census population change by ethnic group and statistical area 2

    • datafinder.stats.govt.nz
    csv, dwg, geodatabase +6
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    Stats NZ, 2023 Census population change by ethnic group and statistical area 2 [Dataset]. https://datafinder.stats.govt.nz/layer/119483-2023-census-population-change-by-ethnic-group-and-statistical-area-2/
    Explore at:
    shapefile, pdf, kml, geodatabase, mapinfo tab, csv, dwg, mapinfo mif, geopackage / sqliteAvailable download formats
    Dataset provided by
    Statistics New Zealandhttp://www.stats.govt.nz/
    Authors
    Stats NZ
    License

    https://datafinder.stats.govt.nz/license/attribution-4-0-international/https://datafinder.stats.govt.nz/license/attribution-4-0-international/

    Area covered
    Description

    Dataset contains ethnic group census usually resident population counts from the 2013, 2018, and 2023 Censuses, as well as the percentage change in the ethnic group population count between the 2013 and 2018 Censuses, and between the 2018 and 2023 Censuses. Data is available by statistical area 2.

    The ethnic groups are:

    • European
    • Māori
    • Pacific peoples
    • Asian
    • Middle Eastern/Latin American/African
    • Other ethnicity

    Map shows percentage change in the census usually resident population count for ethnic groups between the 2018 and 2023 Censuses.

    Download lookup file from Stats NZ ArcGIS Online or embedded attachment in Stats NZ geographic data service. Download data table (excluding the geometry column for CSV files) using the instructions in the Koordinates help guide.

    Footnotes

    Geographical boundaries

    Statistical standard for geographic areas 2023 (updated December 2023) has information about geographic boundaries as of 1 January 2023. Address data from 2013 and 2018 Censuses was updated to be consistent with the 2023 areas. Due to the changes in area boundaries and coding methodologies, 2013 and 2018 counts published in 2023 may be slightly different to those published in 2013 or 2018.

    Subnational census usually resident population

    The census usually resident population count of an area (subnational count) is a count of all people who usually live in that area and were present in New Zealand on census night. It excludes visitors from overseas, visitors from elsewhere in New Zealand, and residents temporarily overseas on census night. For example, a person who usually lives in Christchurch city and is visiting Wellington city on census night will be included in the census usually resident population count of Christchurch city. 

    Caution using time series

    Time series data should be interpreted with care due to changes in census methodology and differences in response rates between censuses. The 2023 and 2018 Censuses used a combined census methodology (using census responses and administrative data), while the 2013 Census used a full-field enumeration methodology (with no use of administrative data).

    About the 2023 Census dataset

    For information on the 2023 dataset see Using a combined census model for the 2023 Census. We combined data from the census forms with administrative data to create the 2023 Census dataset, which meets Stats NZ's quality criteria for population structure information. We added real data about real people to the dataset where we were confident the people who hadn’t completed a census form (which is known as admin enumeration) will be counted. We also used data from the 2018 and 2013 Censuses, administrative data sources, and statistical imputation methods to fill in some missing characteristics of people and dwellings.

    Data quality

    The quality of data in the 2023 Census is assessed using the quality rating scale and the quality assurance framework to determine whether data is fit for purpose and suitable for release. Data quality assurance in the 2023 Census has more information.

    Quality rating of a variable

    The quality rating of a variable provides an overall evaluation of data quality for that variable, usually at the highest levels of classification. The quality ratings shown are for the 2023 Census unless stated. There is variability in the quality of data at smaller geographies. Data quality may also vary between censuses, for subpopulations, or when cross tabulated with other variables or at lower levels of the classification. Data quality ratings for 2023 Census variables has more information on quality ratings by variable.

    Ethnicity concept quality rating

    Ethnicity is rated as high quality.

    Ethnicity – 2023 Census: Information by concept has more information, for example, definitions and data quality.

    Using data for good

    Stats NZ expects that, when working with census data, it is done so with a positive purpose, as outlined in the Māori Data Governance Model (Data Iwi Leaders Group, 2023). This model states that "data should support transformative outcomes and should uplift and strengthen our relationships with each other and with our environments. The avoidance of harm is the minimum expectation for data use. Māori data should also contribute to iwi and hapū tino rangatiratanga”.

    Confidentiality

    The 2023 Census confidentiality rules have been applied to 2013, 2018, and 2023 data. These rules protect the confidentiality of individuals, families, households, dwellings, and undertakings in 2023 Census data. Counts are calculated using fixed random rounding to base 3 (FRR3) and suppression of ‘sensitive’ counts less than six, where tables report multiple geographic variables and/or small populations. Individual figures may not always sum to stated totals. Applying confidentiality rules to 2023 Census data and summary of changes since 2018 and 2013 Censuses has more information about 2023 Census confidentiality rules.

    Symbol

    -998 Not applicable

    -999 Confidential

    Percentages

    To calculate percentages, divide the figure for the category of interest by the figure for ‘Total stated’ where this applies.

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Statista (2025). View on restrictions on AI replacing creative jobs in the U.S. 2023, by ethnicity [Dataset]. https://www.statista.com/statistics/1403235/opinion-government-restrictions-ai-replacing-writing-animation-jobs-us-ethnicity/
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View on restrictions on AI replacing creative jobs in the U.S. 2023, by ethnicity

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Dataset updated
Jul 9, 2025
Dataset authored and provided by
Statistahttp://statista.com/
Time period covered
Apr 5, 2023 - Apr 8, 2023
Area covered
United States
Description

The results of an April 2023 survey held in the United States show that ** percent of Hispanic respondents thought that governments should restrict AI's abilities to replace humans in creative and entertainment jobs, such as writers and animators. While ** percent of White respondents agreed, only ** percent of Black respondents thought the same. In the latter group, the majority had no opinion on this matter.

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