100+ datasets found
  1. Single and multiple residential property owners: Demographic data and value...

    • www150.statcan.gc.ca
    • datasets.ai
    • +1more
    Updated Dec 9, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Government of Canada, Statistics Canada (2024). Single and multiple residential property owners: Demographic data and value of properties owned, inactive [Dataset]. http://doi.org/10.25318/4610003801-eng
    Explore at:
    Dataset updated
    Dec 9, 2024
    Dataset provided by
    Statistics Canadahttps://statcan.gc.ca/en
    Area covered
    Canada
    Description

    Data on resident owners who are persons occupying one of their residential properties: sex, age, total income, the type and the assessment value of the owner-occupied property, as well as the number and the total assessment value of residential properties owned.

  2. T

    Vital Signs: Home Prices by Metro Area (2022)

    • data.bayareametro.gov
    csv, xlsx, xml
    Updated Dec 2, 2022
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    (2022). Vital Signs: Home Prices by Metro Area (2022) [Dataset]. https://data.bayareametro.gov/Economy/Vital-Signs-Home-Prices-by-Metro-Area-2022-/rgc5-3kcq
    Explore at:
    csv, xml, xlsxAvailable download formats
    Dataset updated
    Dec 2, 2022
    Description

    VITAL SIGNS INDICATOR
    Home Prices (EC7)

    FULL MEASURE NAME
    Home Prices

    LAST UPDATED
    December 2022

    DESCRIPTION
    Home prices refer to the cost of purchasing one’s own house or condominium. While a significant share of residents may choose to rent, home prices represent a primary driver of housing affordability in a given region, county or city.

    DATA SOURCE
    Zillow: Zillow Home Value Index (ZHVI) - http://www.zillow.com/research/data/
    2000-2021

    California Department of Finance: E-4 Historical Population Estimates for Cities, Counties, and the State - https://dof.ca.gov/forecasting/demographics/estimates/
    2000-2021

    US Census Population and Housing Unit Estimates - https://www.census.gov/programs-surveys/popest.html
    2000-2021

    Bureau of Labor Statistics: Consumer Price Index - http://data.bls.gov
    2000-2021

    US Census ZIP Code Tabulation Areas (ZCTAs) - https://www.census.gov/programs-surveys/geography/guidance/geo-areas/zctas.html
    2020 Census Blocks

    CONTACT INFORMATION
    vitalsigns.info@bayareametro.gov

    METHODOLOGY NOTES (across all datasets for this indicator)
    Housing price estimates at the regional-, county-, city- and zip code-level come from analysis of individual home sales by Zillow based upon transaction records. Zillow Home Value Index (ZHVI) is a smoothed, seasonally adjusted measure of the typical home value and market changes across a given region and housing type. It reflects the typical value for homes in the 35th to 65th percentile range. ZHVI is computed from public record transaction data as reported by counties. All standard real estate transactions are included in this metric, including REO sales and auctions. Zillow makes a substantial effort to remove transactions not typically considered a standard sale. Examples of these include bank takeovers of foreclosed properties, title transfers after a death or divorce and non arms-length transactions. Zillow defines all homes as single-family residential, condominium and co-operative homes with a county record. Single-family residences are detached, which means the home is an individual structure with its own lot. Condominiums are units that can be owned in a multi-unit complex, such as an apartment building. Co-operative homes are slightly different from condominiums in that the homeowners own shares in the corporation that owns the building, not the actual units themselves.

    For metropolitan area comparison values, the Bay Area metro area’s median home sale price is the population-weighted average of the nine counties’ median home prices. Data is adjusted for inflation using Bureau of Labor Statistics metropolitan statistical area (MSA)-specific series. Inflation-adjusted data are presented to illustrate how home prices have grown relative to overall price increases; that said, the use of the Consumer Price Index (CPI) does create some challenges given the fact that housing represents a major chunk of consumer goods bundle used to calculate CPI. This reflects a methodological tradeoff between precision and accuracy and is a common concern when working with any commodity that is a major component of the CPI itself.

  3. Residential property buyers: Demographic data, first-time home buyer status,...

    • www150.statcan.gc.ca
    • open.canada.ca
    Updated Dec 9, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Government of Canada, Statistics Canada (2024). Residential property buyers: Demographic data, first-time home buyer status, and price-to-income ratio, inactive [Dataset]. http://doi.org/10.25318/4610006201-eng
    Explore at:
    Dataset updated
    Dec 9, 2024
    Dataset provided by
    Statistics Canadahttps://statcan.gc.ca/en
    Area covered
    Canada
    Description

    Data on resident buyers who are persons that purchased a residential property in a market sale and filed their T1 tax return form: number of and incomes of residential property buyers, sale price, price-to-income ratio by the number of buyers as part of a sale, age groups, first-time home buyer status, buyer characteristics (sex, family type, immigration status, period of immigration, admission category).

  4. T

    Vital Signs: Home Prices - Bay Area (2022)

    • data.bayareametro.gov
    csv, xlsx, xml
    Updated Oct 26, 2022
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    (2022). Vital Signs: Home Prices - Bay Area (2022) [Dataset]. https://data.bayareametro.gov/Economy/Vital-Signs-Home-Prices-Bay-Area-2022-/2uf4-6aym
    Explore at:
    xlsx, xml, csvAvailable download formats
    Dataset updated
    Oct 26, 2022
    Area covered
    San Francisco Bay Area
    Description

    VITAL SIGNS INDICATOR
    Home Prices (EC7)

    FULL MEASURE NAME
    Home Prices

    LAST UPDATED
    December 2022

    DESCRIPTION
    Home prices refer to the cost of purchasing one’s own house or condominium. While a significant share of residents may choose to rent, home prices represent a primary driver of housing affordability in a given region, county or city.

    DATA SOURCE
    Zillow: Zillow Home Value Index (ZHVI) - http://www.zillow.com/research/data/
    2000-2021

    California Department of Finance: E-4 Historical Population Estimates for Cities, Counties, and the State - https://dof.ca.gov/forecasting/demographics/estimates/
    2000-2021

    US Census Population and Housing Unit Estimates - https://www.census.gov/programs-surveys/popest.html
    2000-2021

    Bureau of Labor Statistics: Consumer Price Index - http://data.bls.gov
    2000-2021

    US Census ZIP Code Tabulation Areas (ZCTAs) - https://www.census.gov/programs-surveys/geography/guidance/geo-areas/zctas.html
    2020 Census Blocks

    CONTACT INFORMATION
    vitalsigns.info@bayareametro.gov

    METHODOLOGY NOTES (across all datasets for this indicator)
    Housing price estimates at the regional-, county-, city- and zip code-level come from analysis of individual home sales by Zillow based upon transaction records. Zillow Home Value Index (ZHVI) is a smoothed, seasonally adjusted measure of the typical home value and market changes across a given region and housing type. It reflects the typical value for homes in the 35th to 65th percentile range. ZHVI is computed from public record transaction data as reported by counties. All standard real estate transactions are included in this metric, including REO sales and auctions. Zillow makes a substantial effort to remove transactions not typically considered a standard sale. Examples of these include bank takeovers of foreclosed properties, title transfers after a death or divorce and non arms-length transactions. Zillow defines all homes as single-family residential, condominium and co-operative homes with a county record. Single-family residences are detached, which means the home is an individual structure with its own lot. Condominiums are units that can be owned in a multi-unit complex, such as an apartment building. Co-operative homes are slightly different from condominiums in that the homeowners own shares in the corporation that owns the building, not the actual units themselves.

    For metropolitan area comparison values, the Bay Area metro area’s median home sale price is the population-weighted average of the nine counties’ median home prices. Data is adjusted for inflation using Bureau of Labor Statistics metropolitan statistical area (MSA)-specific series. Inflation-adjusted data are presented to illustrate how home prices have grown relative to overall price increases; that said, the use of the Consumer Price Index (CPI) does create some challenges given the fact that housing represents a major chunk of consumer goods bundle used to calculate CPI. This reflects a methodological tradeoff between precision and accuracy and is a common concern when working with any commodity that is a major component of the CPI itself.

  5. a

    Single and multiple residential property owners - demographic data and value...

    • hamiltondatacatalog-mcmaster.hub.arcgis.com
    Updated Jun 3, 2022
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    jadonvs_McMaster (2022). Single and multiple residential property owners - demographic data and value of properties owned by FEMALES (Row House) Hamilton City [Dataset]. https://hamiltondatacatalog-mcmaster.hub.arcgis.com/items/b531bd70d5b74052bef76461824a0615
    Explore at:
    Dataset updated
    Jun 3, 2022
    Dataset authored and provided by
    jadonvs_McMaster
    Description

    Frequency: OccasionalTable: 46-10-0038-01Release date: 2022-04-12Geography: Province or territory, Census subdivision, Census metropolitan area, Census agglomeration, Census metropolitan area part, Census agglomeration partSymbol legend:.. / not available for a specific reference periodx / suppressed to meet the confidentiality requirements of the Statistics Act A / data quality: excellentThe footnotes in the table are represented in brackets.1) The universe of this table is restricted to individual resident owners who occupy a residential property. An owner's geographic location is determined by the location of the occupied property for both single- and multiple-property owners. A residential property refers to all land and structures intended for private occupancy whether on a permanent or a temporary basis.2) The geographic boundaries used in this table are the 2016 census subdivisions boundaries.3) Previous reference period estimates are subject to revision.4) The Composite Quality Indicator (CQI) shown in this table is created by combining many individual quality indicators, each one representing the quality of different Canadian Housing Statistics Program (CHSP) data processing steps (for example: coding, geocoding, linkage and imputation) and includes the following values: A - Excellent: All domain variables and the variable of interest are of excellent quality. B - Very good: All domain variables and the variable of interest are of very good to excellent quality. C - Good: The quality of some of the domain variables or the variable of interest is considered good while all the other variables are of very good to excellent quality. D - Acceptable: The quality of some of the domain variables or the variable of interest is considered acceptable while all the other variables are of good to excellent quality. E - Use with caution: Several domain variables or the variable of interest are of poor quality. F - Too unreliable to be published. The CQIs are available starting with the reference period of 2020, except for the Northwest Territories where they are available from 2019 reference period.5) Property type" refers to property characteristics and/or dwelling configuration on which there can be one or more residential structures. Property types include single-detached houses semi-detached houses condominium apartments mobile homes other property types properties with multiple residential units and vacant land."6) Estimates by property type in Newfoundland and Labrador are only available in the census subdivision of St. John’s.7) Estimates by property type in Northwest Territories are not available.8) Estimates by property type in Nunavut are not available.9) The number of properties owned by the property owner is limited to residential properties that are within a given province.10) Newfoundland and Labrador estimates are not available at the provincial level and for the category “Outside of census metropolitan areas (CMAs) and census agglomerations (CAs)”.11) Northwest Territories estimates are only available in the census agglomeration of Yellowknife.12) Counts undergo random rounding, a process that transforms all raw counts into randomly rounded counts. This reduces the possibility of identifying individuals in the tabulations. All percentages are derived from rounded counts, subtotals and totals may not exactly equal the sum of components due to system rounding.13) The number of property owners estimates are not available for the 2018 reference period.14) The number of owners should be used with caution outside of census metropolitan areas (CMAs) and census agglomerations (CAs), as well as the proportion of owners by geography. This note does not apply to Nunavut.15) Assessment value" refers to the assessed value of the property for the purposes of determining property taxes. It is important to note that the assessed value does not necessarily represent the market value. Given that different provinces and territories have their own assessment periods and duration of the valuation roll it is difficult to make accurate comparisons of similar properties from one province or territory to another. For properties that are being utilized for both residential and non-residential purposes only the residential portion's value has been taken into account. The reference years of the assessment values by province or territory are available here: Canadian Housing Statistics Program (CHSP)."16) For Nunavut, the property use indicator is not available, the universe of this table includes all individual resident owners. For owners with multiple properties, the geographic location and type of property are from the residential property with the highest assessment value.17) Averages and medians are calculated using values greater than zero for the variables of interest.18) Total assessment value" represents the sum of the assessment values of all residential properties owned by an owner within a given province."19) Total income of person" refers to the total income of an individual before deductions for income taxes during the previous year. This income measure is the sum of market income and government transfers. Market income includes employment income, investment income, private retirement income and other income from market sources during the previous year. Government transfers refer to all cash benefits received from federal, provincial, territorial or municipal governments during the previous year."Cite: Statistics Canada. Table 46-10-0038-01 Single and multiple residential property owners: demographic data and value of properties ownedhttps://www150.statcan.gc.ca/t1/tbl1/en/tv.action?pid=4610003801

  6. North Carolina Population and Housing Statistics

    • kaggle.com
    zip
    Updated Dec 20, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    The Devastator (2023). North Carolina Population and Housing Statistics [Dataset]. https://www.kaggle.com/datasets/thedevastator/north-carolina-population-and-housing-statistics
    Explore at:
    zip(723890417 bytes)Available download formats
    Dataset updated
    Dec 20, 2023
    Authors
    The Devastator
    Area covered
    North Carolina
    Description

    North Carolina Population and Housing Statistics

    Demographic and Housing Trends in North Carolina

    By Matthew Schnars [source]

    About this dataset

    This comprehensive dataset provides a well-detailed and robust statistical representation of various characteristics related to the population and housing conditions of North Carolina. The dataset originates from NC LINC (Log Into North Carolina), a critical data allocation platform that focuses on sharing information regarding diverse aspects of the state’s overall demographics, socio-economic conditions, education, and employment background.

    The dataset highlights a variety of facets such as population estimates by age group, race or ethnic group encompassing multiple demographic groups across different geographic areas within the state including counties and municipalities. Utilizing this expansive set of data could prove instrumental for researchers looking into demographic trends, market estimation studies or any other analysis requiring population certifications.

    Revolving around Housing Statistics in North Carolina, this dataset also gives a complete perspective about various ypes of residences available throughout the region. Availability types include both renter-occupied housing units along with owned homes, providing an encapsulating vision into the home ownership versus rental situation in North Carolina. In conjunction with providing insight into occupancy details for vacant homes.

    An intriguing section included within these datasets is congregated ethnicity-based data spread across numerous age-groups which can assist research based out on diverse cultures dwelling within this area.

    Overall, this dataset constitutes an essential resource for stakeholders interested in understanding demographic transformations over time or gaining insights into housing availability situations across different localities in North Carolina State to inform urban planning strategies and policies beneficially impacting residents’ lives directly

    How to use the dataset

    This dataset offers a broad range of demographic and housing data for North Carolina, making it an ideal resource for those interested in demographic trends, urban planning, social science research, real estate and economic studies. Here's how to get the most out of it:

    • Interpretation: Determine what each column represents in terms of demographic and housing attributes. Familiarize yourself with the unique characteristics that each column represents such as population size, race categories, gender distributions etc.

    • Comparison Studies: Analyze different locations within North Carolina by comparing figures across rows (geographic units). This can provide insight on socio-economic disparities or geographical preferences among residents.

    • Temporal Analysis: Although the dataset doesn't contain specific dates or timeframes directly related to these statistics, you can cross-reference with external datasets from different years to conduct temporal analysis procedures such as observing the growth rates in population or changes in housing statistics.

    • Joining Data: Combine this dataset with other relevant datasets like education levels or crime rates which may not be available here but could add multidimensional value when conducting thorough analyses.

    • Correlation Studies: Perform correlation studies between different columns e.g., is there a strong correlation between population density and number of occupied houses? Such insights may be valuable for multiple sectors including real estate investment or policy-making purposes.

    • Map Visualization: Use geographic tools to map data based on counties/townships providing visual perspectives over raw number comparisons which could potentially lead to more nuanced interpretations of demographic distributions across North Carolina

    • Predictive Modelling/Forecasting: Based on historic figures available through this database develop models which predict future trends within demographics & housing sector

    8: Presentation/Communication Tool: Whether you're delivering a presentation about social class disparities in NC regions or just curious about where populations are densest versus where there are more mobile homes vs homes owned freely -hamarize and display data in an easy-to-understand format.

    Before diving deep, always remember to clean the dataset by eliminating duplicates, filling NA values aptly, and verifying the authenticity of the data. Furthermore, always respect privacy & comply with data regulation policies while handling demographic databases

    Research Ideas

    • Urban Planning: This dataset can be a val...
  7. Population Estimates: Housing Unit Estimates for US, States, and Counties

    • catalog.data.gov
    Updated Jul 19, 2023
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    U.S. Census Bureau (2023). Population Estimates: Housing Unit Estimates for US, States, and Counties [Dataset]. https://catalog.data.gov/dataset/population-estimates-housing-unit-estimates-for-us-states-and-counties
    Explore at:
    Dataset updated
    Jul 19, 2023
    Dataset provided by
    United States Census Bureauhttp://census.gov/
    Area covered
    United States
    Description

    Annual Housing Unit Estimates for the United States, States, and Counties: April 1, 2010 to July 1, 2019 // Source: U.S. Census Bureau, Population Division // Note: The estimates are based on the 2010 Census and reflect changes to the April 1, 2010 housing units due to the Count Question Resolution program and geographic program revisions // Each year, the Census Bureau's Population and Housing Unit Estimates Program utilizes current data on new residential construction, placements of manufactured housing, and housing unit loss to calculate change in the housing stock since the most recent decennial census, and produces a time series of housing unit estimates. The annual time series of estimates begins with the most recent decennial census data and extends to the vintage year. The vintage year (e.g., V2019) refers to the final year of the time series. The reference date for all estimates is July 1, unless otherwise specified. With each new issue of estimates, the entire estimates series is revised. Additional information, including historical and intercensal estimates, evaluation estimates, demographic analysis, research papers, and methodology is available on website: https://www.census.gov/programs-surveys/popest.html.

  8. f

    Shannon Elias | Properties Data | Real Estate Data

    • datastore.forage.ai
    Updated Oct 7, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    (2024). Shannon Elias | Properties Data | Real Estate Data [Dataset]. https://datastore.forage.ai/searchresults/?resource_keyword=Demographic%20and%20Market%20Data
    Explore at:
    Dataset updated
    Oct 7, 2024
    Description

    Shannon Elias is a distinguished real estate agent with a deep understanding of the San Diego and North County markets. With his genuine passion and commitment to his clients, Shannon consistently delivers exceptional representation at every stage of the home buying or selling process. As a specialist in residential, luxury, and investment properties, his trusted perspective and thorough guidance have earned him a reputation for excellence.

    From finding your dream home to navigating the complexities of the real estate market, Shannon Elias is dedicated to ensuring his clients achieve their real estate goals. His area guides provide unique market, lifestyle, and demographic insights into each area, helping you make informed decisions. With his skills, knowledge, and network of local connections, Shannon Elias is the perfect partner for your real estate journey.

  9. Distribution of population in the U.S. 2023, by type of housing

    • statista.com
    Updated Oct 23, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Statista (2024). Distribution of population in the U.S. 2023, by type of housing [Dataset]. https://www.statista.com/statistics/1498066/distribution-of-population-us-by-type-of-housing/
    Explore at:
    Dataset updated
    Oct 23, 2024
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    2023
    Area covered
    United States
    Description

    In 2023, most people in the United States lived in detached or attached single-family housing. Over ** percent of people lived in a single-family home that they owned, with a further ** percent living in a house that they were renting. Nevertheless, most of the people living in a rented housing unit lived in multi-family housing.

  10. a

    Neighborhood: Demographics Data in the United States

    • attomdata.com
    attom api +3
    Updated Apr 27, 2018
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    ATTOM Data Solutions (2018). Neighborhood: Demographics Data in the United States [Dataset]. https://www.attomdata.com/data/neighborhood-data/demographic/
    Explore at:
    attom api, csv, attom cloud, excelAvailable download formats
    Dataset updated
    Apr 27, 2018
    Dataset authored and provided by
    ATTOM Data Solutions
    Description

    Data about the local area where a property is located. The product includes a variety of data: - Demographics (Population, employment, ethnicity, etc) Data is aggregated and available at the following geos: U.S. National, States, Counties, County Subdivisions, Core Based Statistical Areas (CBSA), Combined Statistical Areas (CSA), Incorporated Places, Census Designated Places (CDP), Tracts, Block Groups, Postal Cities, Zip Codes, Neighborhoods and Residential Subdivisions

  11. Acres Home, Houston, TX, US Demographics 2025

    • point2homes.com
    html
    Updated 2025
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Point2Homes (2025). Acres Home, Houston, TX, US Demographics 2025 [Dataset]. https://www.point2homes.com/US/Neighborhood/TX/Houston/Acres-Home-Demographics.html
    Explore at:
    htmlAvailable download formats
    Dataset updated
    2025
    Dataset authored and provided by
    Point2Homeshttps://plus.google.com/116333963642442482447/posts
    Time period covered
    2025
    Area covered
    Acres Home, Houston, Texas, United States
    Variables measured
    Asian, Other, White, 2 units, Over 65, Median age, Blue collar, Mobile home, 3 or 4 units, 5 to 9 units, and 70 more
    Description

    Comprehensive demographic dataset for Acres Home, Houston, TX, US including population statistics, household income, housing units, education levels, employment data, and transportation with year-over-year changes.

  12. f

    HousingCatalyst | Properties Data | Real Estate Data

    • datastore.forage.ai
    Updated Oct 7, 2024
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    (2024). HousingCatalyst | Properties Data | Real Estate Data [Dataset]. https://datastore.forage.ai/searchresults/?resource_keyword=Demographic%20and%20Market%20Data
    Explore at:
    Dataset updated
    Oct 7, 2024
    Description

    HousingCatalyst is a prominent real estate consultancy that provides in-depth market analysis and insights to investors, developers, and policymakers. With a focus on data-driven decision-making, the company's expertise spans market research, economic modeling, and strategic planning. Their online presence offers a treasure trove of information on the residential and commercial property markets, including demographic trends, housing affordability, and market forecasts.

    By delving into HousingCatalyst's online repository, users can expect to find valuable data on emerging trends, market fluctuations, and regulatory changes that impact the real estate industry. The company's extensive research library is a goldmine of information for industry professionals, academics, and policymakers seeking to stay abreast of the latest developments in the sector. With a strong reputation for expertise and accuracy, HousingCatalyst's online presence is a go-to resource for those seeking insights to inform their real estate decisions.

  13. d

    United States residential historical data

    • search.dataone.org
    • borealisdata.ca
    Updated Dec 28, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Data Axle (2023). United States residential historical data [Dataset]. http://doi.org/10.5683/SP3/N4ZP8P
    Explore at:
    Dataset updated
    Dec 28, 2023
    Dataset provided by
    Borealis
    Authors
    Data Axle
    Time period covered
    Jan 1, 2006 - Jan 1, 2022
    Description

    Product contains one data file (.csv format) for each year from 2006-2022. Records provide information about family demographics, dwelling characteristics, home value, income, years in residence & detailed geographic identifiers. Note: These data files are large (9-14GB each) and cannot be delivered through the Borealis platform. Please contact the Map and Data Library to arrange access: https://mdl.library.utoronto.ca/about/contact-form.

  14. d

    Factori USA People Data | socio-demographic, location, interest and intent...

    • datarade.ai
    .json, .csv
    Updated Jul 23, 2022
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Factori (2022). Factori USA People Data | socio-demographic, location, interest and intent data | E-Commere |Mobile Apps | Online Services [Dataset]. https://datarade.ai/data-products/factori-usa-consumer-graph-data-socio-demographic-location-factori
    Explore at:
    .json, .csvAvailable download formats
    Dataset updated
    Jul 23, 2022
    Dataset authored and provided by
    Factori
    Area covered
    United States of America
    Description

    Our People data is gathered and aggregated via surveys, digital services, and public data sources. We use powerful profiling algorithms to collect and ingest only fresh and reliable data points.

    Our comprehensive data enrichment solution includes a variety of data sets that can help you address gaps in your customer data, gain a deeper understanding of your customers, and power superior client experiences.

    1. Geography - City, State, ZIP, County, CBSA, Census Tract, etc.
    2. Demographics - Gender, Age Group, Marital Status, Language etc.
    3. Financial - Income Range, Credit Rating Range, Credit Type, Net worth Range, etc
    4. Persona - Consumer type, Communication preferences, Family type, etc
    5. Interests - Content, Brands, Shopping, Hobbies, Lifestyle etc.
    6. Household - Number of Children, Number of Adults, IP Address, etc.
    7. Behaviours - Brand Affinity, App Usage, Web Browsing etc.
    8. Firmographics - Industry, Company, Occupation, Revenue, etc
    9. Retail Purchase - Store, Category, Brand, SKU, Quantity, Price etc.
    10. Auto - Car Make, Model, Type, Year, etc.
    11. Housing - Home type, Home value, Renter/Owner, Year Built etc.

    People Data Schema & Reach: Our data reach represents the total number of counts available within various categories and comprises attributes such as country location, MAU, DAU & Monthly Location Pings:

    Data Export Methodology: Since we collect data dynamically, we provide the most updated data and insights via a best-suited method on a suitable interval (daily/weekly/monthly).

    People Data Use Cases:

    360-Degree Customer View: Get a comprehensive image of customers by the means of internal and external data aggregation.

    Data Enrichment: Leverage Online to offline consumer profiles to build holistic audience segments to improve campaign targeting using user data enrichment

    Fraud Detection: Use multiple digital (web and mobile) identities to verify real users and detect anomalies or fraudulent activity.

    Advertising & Marketing: Understand audience demographics, interests, lifestyle, hobbies, and behaviors to build targeted marketing campaigns.

    Using Factori People Data you can solve use cases like:

    Acquisition Marketing Expand your reach to new users and customers using lookalike modeling with your first party audiences to extend to other potential consumers with similar traits and attributes.

    Lookalike Modeling

    Build lookalike audience segments using your first party audiences as a seed to extend your reach for running marketing campaigns to acquire new users or customers

    And also, CRM Data Enrichment, Consumer Data Enrichment B2B Data Enrichment B2C Data Enrichment Customer Acquisition Audience Segmentation 360-Degree Customer View Consumer Profiling Consumer Behaviour Data

    Here's the schema of People Data: person_id first_name last_name age gender linkedin_url twitter_url facebook_url city state address zip zip4 country delivery_point_bar_code carrier_route walk_seuqence_code fips_state_code fips_country_code country_name latitude longtiude address_type metropolitan_statistical_area core_based+statistical_area census_tract census_block_group census_block primary_address pre_address streer post_address address_suffix address_secondline address_abrev census_median_home_value home_market_value property_build+year property_with_ac property_with_pool property_with_water property_with_sewer general_home_value property_fuel_type year month household_id Census_median_household_income household_size marital_status length+of_residence number_of_kids pre_school_kids single_parents working_women_in_house_hold homeowner children adults generations net_worth education_level occupation education_history credit_lines credit_card_user newly_issued_credit_card_user credit_range_new
    credit_cards loan_to_value mortgage_loan2_amount mortgage_loan_type
    mortgage_loan2_type mortgage_lender_code
    mortgage_loan2_render_code
    mortgage_lender mortgage_loan2_lender
    mortgage_loan2_ratetype mortgage_rate
    mortgage_loan2_rate donor investor interest buyer hobby personal_email work_email devices phone employee_title employee_department employee_job_function skills recent_job_change company_id company_name company_description technologies_used office_address office_city office_country office_state office_zip5 office_zip4 office_carrier_route office_latitude office_longitude office_cbsa_code
    office_census_block_group
    office_census_tract office_county_code
    company_phone
    company_credit_score
    company_csa_code
    company_dpbc
    company_franchiseflag
    company_facebookurl company_linkedinurl company_twitterurl
    company_website company_fortune_rank
    company_government_type company_headquarters_branch company_home_business
    company_industry
    company_num_pcs_used
    company_num_employees
    company_firm_individual company_msa company_msa_name
    company_naics_code
    company_naics_description
    company_naics_code2 company_naics_description2
    company_sic_code2
    company_sic_code2_description
    company_sic...

  15. American House Prices

    • kaggle.com
    zip
    Updated Dec 9, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Jeremy Larcher (2023). American House Prices [Dataset]. https://www.kaggle.com/datasets/jeremylarcher/american-house-prices-and-demographics-of-top-cities
    Explore at:
    zip(682260 bytes)Available download formats
    Dataset updated
    Dec 9, 2023
    Authors
    Jeremy Larcher
    License

    Apache License, v2.0https://www.apache.org/licenses/LICENSE-2.0
    License information was derived automatically

    Area covered
    United States
    Description

    A dataset comprising various variables around housing and demographics for the top 50 American cities by population.

    Variables:

    Zip Code: Zip code within which the listing is present.

    Price: Listed price for the property.

    Beds: Number of beds mentioned in the listing.

    Baths: Number of baths mentioned in the listing.

    Living Space: The total size of the living space, in square feet, mentioned in the listing.

    Address: Street address of the listing.

    City: City name where the listing is located.

    State: State name where the listing is located.

    Zip Code Population: The estimated number of individuals within the zip code. Data from Simplemaps.com.

    Zip Code Density: The estimated number of individuals per square mile within the zip code. Data from Simplemaps.com.

    County: County where the listing is located.

    Median Household income: Estimated median household income. Data from the U.S. Census Bureau.

    Latitude: Latitude of the zip code. ** Data from Simplemaps.com.**

    Longitude: Longitude of the zip code. Data from Simplemaps.com.

  16. d

    New Homeowner Contact Data | USA Coverage | 74% Right Party Contact Rate |...

    • datarade.ai
    Updated Aug 18, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    BatchData (2023). New Homeowner Contact Data | USA Coverage | 74% Right Party Contact Rate | BatchData [Dataset]. https://datarade.ai/data-products/new-homeowner-contact-data-usa-coverage-74-right-party-c-batchdata
    Explore at:
    .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset updated
    Aug 18, 2023
    Dataset authored and provided by
    BatchData
    Area covered
    United States of America
    Description

    New Homeowner Data is a subset of our comprehensive property intelligence database that can be segmented by specific property criteria, household demographics, mortgage, and real estate portfolio information.

    Companies in the home services, financial products, and consumer products industries use BatchData to identify new homeowners who have purchased a property in the last 90 days and uncover their direct phone number, email, and mailing address for timely marketing of products and services new homeowners need. New homeowner data can also be segmented property type (residential real estate or commercial real estate), length of ownership, owner occupancy status, and more!

    New homeowner data is available in a variety of data delivery and data enrichment modes: API (you pull data from us using an API), webhook (we push data to you using an API), AWS S3 upload (we deliver the data to you), S3 download (you download the data from our S3 bucket), SFTP.

    BatchData is both a data and technology solution helping companies in and around the real estate ecosystem achieve faster growth. BatchData specializes in providing accurate contact information for US property owners, including in-depth intelligence and actionable insights related to their property. Our portfolio of products, services, and go-to-market expertise help companies identify their target market, reach the right prospects, enrich their data, and power their products and services.

  17. Wildfire Risk to Communities Housing Unit Density (Image Service)

    • catalog.data.gov
    • resilience.climate.gov
    • +6more
    Updated Sep 2, 2025
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    U.S. Forest Service (2025). Wildfire Risk to Communities Housing Unit Density (Image Service) [Dataset]. https://catalog.data.gov/dataset/wildfire-risk-to-communities-housing-unit-density-image-service-fac22
    Explore at:
    Dataset updated
    Sep 2, 2025
    Dataset provided by
    U.S. Department of Agriculture Forest Servicehttp://fs.fed.us/
    Description

    The data included in this publication depict components of wildfire risk specifically for populated areas in the United States. These datasets represent where people live in the United States and the in situ risk from wildfire, i.e., the risk at the location where the adverse effects take place.National wildfire hazard datasets of annual burn probability and fire intensity, generated by the USDA Forest Service, Rocky Mountain Research Station and Pyrologix LLC, form the foundation of the Wildfire Risk to Communities data. Vegetation and wildland fuels data from LANDFIRE 2020 (version 2.2.0) were used as input to two different but related geospatial fire simulation systems. Annual burn probability was produced with the USFS geospatial fire simulator (FSim) at a relatively coarse cell size of 270 meters (m). To bring the burn probability raster data down to a finer resolution more useful for assessing hazard and risk to communities, we upsampled them to the native 30 m resolution of the LANDFIRE fuel and vegetation data. In this upsampling process, we also spread values of modeled burn probability into developed areas represented in LANDFIRE fuels data as non-burnable. Burn probability rasters represent landscape conditions as of the end of 2020. Fire intensity characteristics were modeled at 30 m resolution using a process that performs a comprehensive set of FlamMap runs spanning the full range of weather-related characteristics that occur during a fire season and then integrates those runs into a variety of results based on the likelihood of those weather types occurring. Before the fire intensity modeling, the LANDFIRE 2020 data were updated to reflect fuels disturbances occurring in 2021 and 2022. As such, the fire intensity datasets represent landscape conditions as of the end of 2022. The data products in this publication that represent where people live, reflect 2021 estimates of housing unit and population counts from the U.S. Census Bureau, combined with building footprint data from Onegeo and USA Structures, both reflecting 2022 conditions.The specific raster datasets included in this publication include:Building Count: Building Count is a 30-m raster representing the count of buildings in the building footprint dataset located within each 30-m pixel.Building Density: Building Density is a 30-m raster representing the density of buildings in the building footprint dataset (buildings per square kilometer [km²]). Building Coverage: Building Coverage is a 30-m raster depicting the percentage of habitable land area covered by building footprints.Population Count (PopCount): PopCount is a 30-m raster with pixel values representing residential population count (persons) in each pixel.Population Density (PopDen): PopDen is a 30-m raster of residential population density (people/km²).Housing Unit Count (HUCount): HUCount is a 30-m raster representing the number of housing units in each pixel.Housing Unit Density (HUDen): HUDen is a 30-m raster of housing-unit density (housing units/km²).Housing Unit Exposure (HUExposure): HUExposure is a 30-m raster that represents the expected number of housing units within a pixel potentially exposed to wildfire in a year. This is a long-term annual average and not intended to represent the actual number of housing units exposed in any specific year.Housing Unit Impact (HUImpact): HUImpact is a 30-m raster that represents the relative potential impact of fire to housing units at any pixel, if a fire were to occur. It is an index that incorporates the general consequences of fire on a home as a function of fire intensity and uses flame length probabilities from wildfire modeling to capture likely intensity of fire.Housing Unit Risk (HURisk): HURisk is a 30-m raster that integrates all four primary elements of wildfire risk - likelihood, intensity, susceptibility, and exposure - on pixels where housing unit density is greater than zero.Additional methodology documentation is provided with the data publication download. Metadata and Downloads: (https://www.fs.usda.gov/rds/archive/catalog/RDS-2020-0060-2).Note: Pixel values in this image service have been altered from the original raster dataset due to data requirements in web services. The service is intended primarily for data visualization. Relative values and spatial patterns have been largely preserved in the service, but users are encouraged to download the source data for quantitative analysis.

  18. Insightful & Vast USA Statistics

    • kaggle.com
    zip
    Updated May 19, 2018
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Golden Oak Research Group (2018). Insightful & Vast USA Statistics [Dataset]. https://www.kaggle.com/forums/f/6032/insightful-vast-usa-statistics
    Explore at:
    zip(10587625 bytes)Available download formats
    Dataset updated
    May 19, 2018
    Dataset authored and provided by
    Golden Oak Research Group
    Area covered
    United States
    Description

    Very Important

    • Check out the new must-see kernel for this dataset Click Here
    • Make Sure to upvote for more datasets and kernel :D

    Overview:

    Explore the dataset and potentially gain valuable insight into your data science project through interesting features. The dataset was developed for a portfolio optimization graduate project I was working on. The goal was to the monetize risk of company deleveraging by associated with changes in economic data. Applications of the dataset may include. To see the data in action visit my analytics page. Analytics Page & Dashboard and to access all 295,000+ records click here.

    • Mortgage-Backed Securities
    • Geographic Business Investment
    • Real Estate Analysis

    For any questions, you may reach us at research_development@goldenoakresearch.com. For immediate assistance, you may reach me on at 585-626-2965. Please Note: the number is my personal number and email is preferred

    Statistical Themes:

    Note: in total there are 75 fields the following are just themes the fields fall under Home Owner Costs: Sum of utilities, property taxes.

    • Second Mortgage: Households with a second mortgage statistics.
    • Home Equity Loan: Households with a Home equity Loan statistics.
    • Debt: Households with any type of debt statistics.
    • Mortgage Costs: Statistics regarding mortgage payments, home equity loans, utilities and property taxes
    • Home Owner Costs: Sum of utilities, property taxes statistics
    • Gross Rent: Contract rent plus the estimated average monthly cost of utility features
    • Gross Rent as Percent of Income Gross rent as the percent of income very interesting
    • High school Graduation: High school graduation statistics.
    • Population Demographics: Population demographic statistics.
    • Age Demographics: Age demographic statistics.
    • Household Income: Total income of people residing in the household.
    • Family Income: Total income of people related to the householder.

    Sources, if you wish to get the data your self :)

    2012-2016 ACS 5-Year Documentation was provided by the U.S. Census Reports. Retrieved May 2, 2018, from

    Access All 325,258 Location of Our Most Complete Database Ever:

    Providing you the potential to monetize risk and optimize your investment portfolio through quality economic features at unbeatable price. Access all 295,000+ records on an incredibly small scale, see links below for more details:

  19. K

    Kazakhstan Residential Buildings Put into Service: Housing Area: ytd:...

    • ceicdata.com
    Updated Jun 27, 2023
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    CEICdata.com (2023). Kazakhstan Residential Buildings Put into Service: Housing Area: ytd: Financed by Population (FP) [Dataset]. https://www.ceicdata.com/en/kazakhstan/buildings-put-into-service-residential-housing-area-ytd/residential-buildings-put-into-service-housing-area-ytd-financed-by-population-fp
    Explore at:
    Dataset updated
    Jun 27, 2023
    Dataset provided by
    CEICdata.com
    License

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

    Time period covered
    May 1, 2017 - Apr 1, 2018
    Area covered
    Kazakhstan
    Variables measured
    Construction Completed
    Description

    Kazakhstan Residential Buildings Put into Service: Housing Area: Year to Date: Financed by Population (FP) data was reported at 3,111,405.000 sq m in Jun 2018. This records an increase from the previous number of 2,271,622.000 sq m for May 2018. Kazakhstan Residential Buildings Put into Service: Housing Area: Year to Date: Financed by Population (FP) data is updated monthly, averaging 1,423,133.500 sq m from Jan 2001 (Median) to Jun 2018, with 210 observations. The data reached an all-time high of 5,379,855.000 sq m in Dec 2007 and a record low of 46,356.000 sq m in Jan 2001. Kazakhstan Residential Buildings Put into Service: Housing Area: Year to Date: Financed by Population (FP) data remains active status in CEIC and is reported by The Agency of Statistics of the Republic of Kazakhstan. The data is categorized under Global Database’s Kazakhstan – Table KZ.EB001: Buildings Put Into Service: Residential Housing Area: ytd.

  20. w

    General Population Census VII, Home III and Housing V - IPUMS Subset -...

    • microdata.worldbank.org
    • catalog.ihsn.org
    • +1more
    Updated Aug 1, 2025
    + more versions
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    National Institute of Statistics (2025). General Population Census VII, Home III and Housing V - IPUMS Subset - Uruguay [Dataset]. https://microdata.worldbank.org/index.php/catalog/1076
    Explore at:
    Dataset updated
    Aug 1, 2025
    Dataset provided by
    IPUMS
    National Institute of Statistics
    Time period covered
    1985 - 1996
    Area covered
    Uruguay
    Description

    Analysis unit

    Persons, households, and dwellings

    UNITS IDENTIFIED: - Dwellings: yes - Vacant Units: Yes - Households: yes - Individuals: yes - Group quarters: yes

    UNIT DESCRIPTIONS: - Dwellings: These are all rooms or complex of rooms and their components that occupy a building or a structurally separate section of the building and that, because of the way in which they have been constructed or transformed, they are destined to by inhabited by people and, at the date of the census, are not used totally for other ends. The census also considers as a dwelling any fixed or mobile shelter in which some person has spent the night during the night previoius to the day of the census. - Households: Group of people with or without kinship connections that live under the same roof and that, at least for their nutrition, depend on a common fund (they participate in a "common pot"). - Group quarters: This is composed of the "institutional population", or, the people that are not integrated into private homes. They include people, normally not connected by kinship connections, that share the dwelling for reasons of work, medical attention, studies, military, religion, tourism, etc. It is composed of people that inhabit military installations, correctional institutions and prisons, dormitories of religious institutions, hospitals, student residencies, hotels, etc.

    Universe

    Population in private and communal housing Wayfarers or people without a dwelling: people that don’t stay overnight in any fixed or mobile shelter that can be located by the census-taker during his route on the day of the census.

    Kind of data

    Population and Housing Census [hh/popcen]

    Sampling procedure

    MICRODATA SOURCE: National Institute of Statistics

    SAMPLE SIZE (person records): 315920.

    SAMPLE DESIGN: Systematic sample of every 10th household with a random start, drawn by the IPUMS Wayfarers or people without a dwelling: people that don’t stay overnight in any fixed or mobile shelter that can be located by the census-taker during his route on the day of the census.

    Mode of data collection

    Face-to-face [f2f]

    Research instrument

    Single record that includes housing, home, and population questionnaires

Share
FacebookFacebook
TwitterTwitter
Email
Click to copy link
Link copied
Close
Cite
Government of Canada, Statistics Canada (2024). Single and multiple residential property owners: Demographic data and value of properties owned, inactive [Dataset]. http://doi.org/10.25318/4610003801-eng
Organization logo

Single and multiple residential property owners: Demographic data and value of properties owned, inactive

4610003801

Explore at:
Dataset updated
Dec 9, 2024
Dataset provided by
Statistics Canadahttps://statcan.gc.ca/en
Area covered
Canada
Description

Data on resident owners who are persons occupying one of their residential properties: sex, age, total income, the type and the assessment value of the owner-occupied property, as well as the number and the total assessment value of residential properties owned.

Search
Clear search
Close search
Google apps
Main menu