100+ datasets found
  1. Breakdown of home loan borrowers in Japan 2023, by household income and...

    • statista.com
    Updated Nov 29, 2025
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    Statista (2025). Breakdown of home loan borrowers in Japan 2023, by household income and interest rate [Dataset]. https://www.statista.com/statistics/1297407/japan-home-loan-borrower-distribution-by-household-income-and-interest-rate-type/
    Explore at:
    Dataset updated
    Nov 29, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Time period covered
    Apr 28, 2023 - May 10, 2023
    Area covered
    Japan
    Description

    According to a survey conducted between April and May 2023, around **** percent of respondents in Japan who took out variable-rate home loans had a household income of ******************** Japanese yen. The majority of home loan borrowers had a yearly household income of *************************************** yen, regardless of the type of interest rate selected.

  2. Insightful & Vast USA Statistics

    • kaggle.com
    zip
    Updated May 19, 2018
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    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:

  3. z

    Mortgage Status By Selected Monthly Owner Costs As A Percentage Of Household...

    • zipatlas.com
    Updated Dec 18, 2023
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    Zip Atlas Inc (2023). Mortgage Status By Selected Monthly Owner Costs As A Percentage Of Household Income [Dataset]. https://zipatlas.com/zip-code-database-premium.htm
    Explore at:
    Dataset updated
    Dec 18, 2023
    Dataset authored and provided by
    Zip Atlas Inc
    License

    https://zipatlas.com/zip-code-database-download.htm#licensehttps://zipatlas.com/zip-code-database-download.htm#license

    Description

    Mortgage Status By Selected Monthly Owner Costs As A Percentage Of Household Income Report based on US Census and American Community Survey Data.

  4. Jumbo 30-Year Fixed Mortgage Rates

    • kaggle.com
    zip
    Updated Jan 10, 2023
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    The Devastator (2023). Jumbo 30-Year Fixed Mortgage Rates [Dataset]. https://www.kaggle.com/datasets/thedevastator/jumbo-30-year-fixed-mortgage-rates/code
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    zip(110462 bytes)Available download formats
    Dataset updated
    Jan 10, 2023
    Authors
    The Devastator
    Description

    Jumbo 30-Year Fixed Mortgage Rates

    Zillow Home Value Forecast and Cash Buyer Data

    By Zillow Data [source]

    About this dataset

    This dataset tracks the average jumbo mortgage rate quoted on Zillow Mortgages for a 30-year, fixed-rate, jumbo mortgage in one-hour increments during business hours. It provides insight into changes in the housing market and helps consumers make wiser decisions with their investments. In addition to tracking monthly mortgage rates, our dataset also covers consumer's home types and housing stock, cash buyer data, Zillow Home Value Forecast (ZHVF), negative equity metrics, affordability forecasts for both mortgages and rents as well as historic data including historical ZHVI and household income. With this unique blend of financial and real estate information, users are empowered to make more informed decisions about their investments. The data is updated weekly with the most recent statistics available so that users always have access to up-to-date information

    More Datasets

    For more datasets, click here.

    Featured Notebooks

    • 🚨 Your notebook can be here! 🚨!

    How to use the dataset

    How to Use This Dataset:

    • To start exploring this dataset, identify what type of home you are interested in by selecting one of the four categories: “all homes” (Zillow defines all homes as single family, condominiums and coops with a county record); multifamily 5+; duplex/triplex; or condos/coops.
    • Understand additional data products that are included such as Zillow Home Value Forecast (ZHVF), Cash Buyers % share, affordability metrics like mortgage affordability or rental affordability and historical ZHVI values along with its median value for particular households or geographies which needs deeper insights into other endogenous variables such detailed information like how many bedrooms a house has etc.
    • Choose your geographic region on which you would want to collect more information– regions could include city breakdowns from nationwide level down till specific metropolitan etc . Also use special crosswalks available if needed between federally defined metrics for counties / metro areas combined with Zillow's own ones for greater accuracy when analysing external facors effect on data . To download all datasets at once - click here. .

    • Gather more relevant external factors for analysis such as home values forecasts using our published methodology post given url , further to mention TransUnion credit bureau related debt amounts also consider median household incomes vis Bureaus of Labor Cost Indexes ; All these give us greater dimensional insights into market dynamics affecting any particular region finally culminating into deeper research findings when taken together . The reasons behind any fluctions observed can be properly derived as a result .

              Finally make sure that proper attribution is alwys done following mentioned Terms Of Use while downloading since 'All Data Accessed And Downloaded From This Page Is Free For Public Use By Consumers , Media
      

    Research Ideas

    • Using the Mortgage Rate Data to devise strategies to help persons purchasing jumbo mortgages determine the best time and rates to acquire a loan.
    • Analyzing trends in the market by investigating changes in affordability over time by studying rent and mortgage affordability, price-to-income ratios, and historical ZHVIs with cash buyers.
    • Comparing different areas of housing markets over diverse geographies using data on all homes, condos/co-ops, multifamily dwellings 5+ units, duplexes/triplexes across various counties or metro areas

    Acknowledgements

    If you use this dataset in your research, please credit the original authors. Data Source

    License

    See the dataset description for more information.

    Columns

    File: MortgageRateJumboFixed.csv | Column name | Description | |:---------------------------|:---------------------------------------------------------------------------------------------------------------| | Date | The date of the mortgage rate. (Date) | | TimePeriod | The time period of the ...

  5. Mortgage payment to income share in the UK 2000-2024, by type of buyer

    • statista.com
    Updated Nov 29, 2025
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    Statista (2025). Mortgage payment to income share in the UK 2000-2024, by type of buyer [Dataset]. https://www.statista.com/statistics/1106852/share-of-mortgage-payment-from-income-united-kingdom-first-time-buyers-and-former-owners/
    Explore at:
    Dataset updated
    Nov 29, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    United Kingdom
    Description

    Housing affordability in the UK has worsened notably since 2020, with the share of income spent on mortgage payments rising for first-time and repeat buyers. In 2024, homebuyers spent, on average, 20.5 percent of their income on mortgage payments, up from 16.2 percent in 2020. First-time buyers spent a notably higher percentage than repeat buyers. One of the main factors for the declining affordability is the rising housing costs. House prices have increased rapidly since the COVID-19 pandemic. Mortgage rates have also soared since, leading to notably higher monthly payments.

  6. F

    Individual Income Tax Filing: Itemized Deductions: Home Mortgage Interest...

    • fred.stlouisfed.org
    json
    Updated Dec 19, 2018
    + more versions
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    (2018). Individual Income Tax Filing: Itemized Deductions: Home Mortgage Interest Paid [Dataset]. https://fred.stlouisfed.org/series/IMZIPHMIPA
    Explore at:
    jsonAvailable download formats
    Dataset updated
    Dec 19, 2018
    License

    https://fred.stlouisfed.org/legal/#copyright-public-domainhttps://fred.stlouisfed.org/legal/#copyright-public-domain

    Description

    Graph and download economic data for Individual Income Tax Filing: Itemized Deductions: Home Mortgage Interest Paid (IMZIPHMIPA) from 1999 to 2016 about itemized deductions, deductions, individual, paid, mortgage, tax, income, interest, housing, and USA.

  7. h

    Fair Lending Statistics: Approval Rates, Income & Demographics (2025)

    • homebuyer.com
    html
    Updated Oct 12, 2025
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    Homebuyer.com (2025). Fair Lending Statistics: Approval Rates, Income & Demographics (2025) [Dataset]. https://homebuyer.com/research/fair-lending-statistics
    Explore at:
    htmlAvailable download formats
    Dataset updated
    Oct 12, 2025
    Dataset provided by
    Homebuyer.com
    License

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

    Time period covered
    2018 - 2024
    Area covered
    Variables measured
    Loan Amount, Approval Rate, Origination Fee, Loan-to-Value Ratio, Debt-to-Income Ratio, Borrower Demographics
    Measurement technique
    Analysis of HMDA public dataset with demographic breakdowns and statistical aggregation
    Description

    Fair lending statistics from 100+ million mortgage applications showing approval rates and demographic patterns by Homebuyer.com.

  8. Housing affordability index in the U.S. 2000-2024

    • statista.com
    Updated Nov 29, 2025
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    Statista (2025). Housing affordability index in the U.S. 2000-2024 [Dataset]. https://www.statista.com/statistics/201568/change-in-the-composite-us-housing-affordability-index-since-1975/
    Explore at:
    Dataset updated
    Nov 29, 2025
    Dataset authored and provided by
    Statistahttp://statista.com/
    Area covered
    United States
    Description

    The Housing Affordability Index value in the United States plummeted in 2022, surpassing the historical record of ***** index points in 2006. In 2024, the housing affordability index measured **** index points, making it the second-worst year for homebuyers since the start of the observation period. What does the Housing Affordability Index mean? The Housing Affordability Index uses data provided by the National Association of Realtors (NAR). It measures whether a family earning the national median income can afford the monthly mortgage payments on a median-priced existing single-family home. An index value of 100 means that a family has exactly enough income to qualify for a mortgage on a home. The higher the index value, the more affordable a house is to a family. Key factors that drive the real estate market Income, house prices, and mortgage rates are some of the most important factors influencing homebuyer sentiment. When incomes increase, consumer power also increases. The median household income in the United States declined in 2022, affecting affordability. Additionally, mortgage interest rates have soared, adding to the financial burden of homebuyers. The sales price of existing single-family homes in the U.S. has increased year-on-year since 2011 and reached ******* U.S. dollars in 2023.

  9. ONS Model-Based Income Estimates, MSOA

    • data.europa.eu
    unknown
    Updated Jan 15, 2019
    + more versions
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    Office for National Statistics (2019). ONS Model-Based Income Estimates, MSOA [Dataset]. https://data.europa.eu/data/datasets/e113d?locale=el
    Explore at:
    unknownAvailable download formats
    Dataset updated
    Jan 15, 2019
    Dataset authored and provided by
    Office for National Statisticshttp://www.ons.gov.uk/
    Description

    The small area model-based income estimates are the official estimates of average (mean) household income at the middle layer super output area (MSOA) level in England and Wales for 2011/12, 2013/14 and 2015/16.

    For 2015-16 the figures are average annual income. For 2013/14 and 2011/12 the figures are average weekly income.

    They are calculated using a model based method to produce the following four estimates of income using a combination of survey data from the Family Resources Survey, and previously published data from the 2011 Census and a number of administrative data sources. The four different measures of income are:

    1. Total household income
    2. Net household income
    3. Net household income (equivalised) before housing costs
    4. Net household income (equivalised) after housing costs

    Total annual household income is the sum of the gross income of every member of the household plus any income from benefits such as Working Families Tax Credit.

    Net annual household income is the sum of the net income of every member of the household. It is calculated using the same components as total income but income is net of:

    • income tax payments;
    • national insurance contributions;
    • domestic rates/council tax;
    • contributions to occupational pension schemes;
    • all maintenance and child support payments, which are deducted from the income of the person making the payments; and
    • parental contribution to students living away from home.

    Net annual household income before housing costs (equivalised) is composed of the same elements as net household weekly income but is subject to the OECD’s equivalisation scale.

    Net annual household income after housing costs (equivalised) is composed of the same elements of net household weekly income but is subject to the following deductions prior to the OECD’s equivalisation scale being applied:

    • rent (gross of housing benefit);
    • water rates, community water charges and council water charges;
    • mortgage interest payments (net of any tax relief);
    • structural insurance premiums (for owner occupiers); and
    • ground rent and service charges.

    For detailed information on aspects of the quality and methodology behind these statistics, "https://www.ons.gov.uk/employmentandlabourmarket/peopleinwork/earningsandworkinghours/methodologies/smallareaincomeestimatesmodelbasedestimatesofthemeanhouseholdweeklyincomeformiddlelayersuperoutputareas201314technicalreport " target="_blank">see the Technical Report.

    This dataset is included in the Greater London Authority's Night Time Observatory. Click here to find out more.
  10. 2021 American Community Survey: B25101 | MORTGAGE STATUS BY MONTHLY HOUSING...

    • data.census.gov
    + more versions
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    ACS, 2021 American Community Survey: B25101 | MORTGAGE STATUS BY MONTHLY HOUSING COSTS AS A PERCENTAGE OF HOUSEHOLD INCOME IN THE PAST 12 MONTHS (ACS 1-Year Estimates Detailed Tables) [Dataset]. https://data.census.gov/cedsci/table?q=B25101%3A%20MORTGAGE%20STATUS%20BY%20MONTHLY%20HOUSING%20COSTS%20AS%20A%20PERCENTAGE%20OF%20HOUSEHOLD%20INCOME%20IN%20THE%20PAST%2012%20MONTHS&g=0100000US&y=2021&tid=ACSDT1Y2021.B25101
    Explore at:
    Dataset provided by
    United States Census Bureauhttp://census.gov/
    Authors
    ACS
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Time period covered
    2021
    Description

    Although the American Community Survey (ACS) produces population, demographic and housing unit estimates, it is the Census Bureau's Population Estimates Program that produces and disseminates the official estimates of the population for the nation, states, counties, cities, and towns and estimates of housing units for states and counties..Supporting documentation on code lists, subject definitions, data accuracy, and statistical testing can be found on the American Community Survey website in the Technical Documentation section.Sample size and data quality measures (including coverage rates, allocation rates, and response rates) can be found on the American Community Survey website in the Methodology section..Source: U.S. Census Bureau, 2021 American Community Survey 1-Year Estimates.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. The value shown here is the 90 percent margin of error. The margin of error can be interpreted roughly as providing a 90 percent probability that the interval defined by the estimate minus the margin of error and the estimate plus the margin of error (the lower and upper confidence bounds) contains the true value. In addition to sampling variability, the ACS estimates are subject to nonsampling error (for a discussion of nonsampling variability, see ACS Technical Documentation). The effect of nonsampling error is not represented in these tables..The 2021 American Community Survey (ACS) data generally reflect the March 2020 Office of Management and Budget (OMB) delineations of metropolitan and micropolitan statistical areas. In certain instances the names, codes, and boundaries of the principal cities shown in ACS tables may differ from the OMB delineations due to differences in the effective dates of the geographic entities..Estimates of urban and rural populations, housing units, and characteristics reflect boundaries of urban areas defined based on Census 2010 data. As a result, data for urban and rural areas from the ACS do not necessarily reflect the results of ongoing urbanization..Explanation of Symbols:- The estimate could not be computed because there were an insufficient number of sample observations. For a ratio of medians estimate, one or both of the median estimates falls in the lowest interval or highest interval of an open-ended distribution. For a 5-year median estimate, the margin of error associated with a median was larger than the median itself.N The estimate or margin of error cannot be displayed because there were an insufficient number of sample cases in the selected geographic area. (X) The estimate or margin of error is not applicable or not available.median- The median falls in the lowest interval of an open-ended distribution (for example "2,500-")median+ The median falls in the highest interval of an open-ended distribution (for example "250,000+").** The margin of error could not be computed because there were an insufficient number of sample observations.*** The margin of error could not be computed because the median falls in the lowest interval or highest interval of an open-ended distribution.***** A margin of error is not appropriate because the corresponding estimate is controlled to an independent population or housing estimate. Effectively, the corresponding estimate has no sampling error and the margin of error may be treated as zero.

  11. T

    United States - Individual Income Tax Filing: Itemized Deductions: Home...

    • tradingeconomics.com
    csv, excel, json, xml
    Updated Mar 11, 2018
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    TRADING ECONOMICS (2018). United States - Individual Income Tax Filing: Itemized Deductions: Home Mortgage Interest Paid [Dataset]. https://tradingeconomics.com/united-states/individual-income-tax-filing-itemized-deductions-home-mortgage-interest-paid-thous-of-u-s-dollar-fed-data.html
    Explore at:
    excel, json, csv, xmlAvailable download formats
    Dataset updated
    Mar 11, 2018
    Dataset authored and provided by
    TRADING ECONOMICS
    License

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

    Time period covered
    Jan 1, 1976 - Dec 31, 2025
    Area covered
    United States
    Description

    United States - Individual Income Tax Filing: Itemized Deductions: Home Mortgage Interest Paid was 282953098.00000 Thous. of U.S. $ in January of 2016, according to the United States Federal Reserve. Historically, United States - Individual Income Tax Filing: Itemized Deductions: Home Mortgage Interest Paid reached a record high of 491432301.00000 in January of 2007 and a record low of 272148740.00000 in January of 1999. Trading Economics provides the current actual value, an historical data chart and related indicators for United States - Individual Income Tax Filing: Itemized Deductions: Home Mortgage Interest Paid - last updated from the United States Federal Reserve on October of 2025.

  12. t

    SELECTED MONTHLY OWNER COSTS AS A PERCENTAGE OF HOUSEHOLD INCOME (SMOCAPI) -...

    • portal.tad3.org
    Updated Jul 19, 2023
    + more versions
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    (2023). SELECTED MONTHLY OWNER COSTS AS A PERCENTAGE OF HOUSEHOLD INCOME (SMOCAPI) - DP04_HIL_T - Dataset - CKAN [Dataset]. https://portal.tad3.org/dataset/selected-monthly-owner-costs-as-a-percentage-of-household-income-smocapi-dp04_hil_t
    Explore at:
    Dataset updated
    Jul 19, 2023
    License

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

    Description

    SELECTED HOUSING CHARACTERISTICS SELECTED MONTHLY OWNER COSTS AS A PERCENTAGE OF HOUSEHOLD INCOME (SMOCAPI) - DP04 Universe - Housing units with a mortgage and Housing units without a mortgage Survey-Program - American Community Survey 5-year estimates Years - 2020, 2021, 2022 The information on selected monthly owner costs as a percentage of household income is the computed ratio of selected monthly owner costs to monthly household income. The ratio was computed separately for each unit and rounded to the nearest whole percentage. The data are tabulated only for owner-occupied units.

  13. h

    Mortgage Approval Rates by Debt-to-Income Ratio (2024)

    • homebuyer.com
    json
    Updated Dec 1, 2025
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    U.S. Consumer Financial Protection Bureau (2025). Mortgage Approval Rates by Debt-to-Income Ratio (2024) [Dataset]. https://homebuyer.com/research/fair-lending-statistics
    Explore at:
    jsonAvailable download formats
    Dataset updated
    Dec 1, 2025
    Dataset provided by
    U.S. Consumer Financial Protection Bureau
    License

    https://www.usa.gov/government-copyrighthttps://www.usa.gov/government-copyright

    Time period covered
    2018 - 2024
    Area covered
    United States
    Variables measured
    Mortgage Approval Rate
    Description

    Mortgage approval rates by debt-to-income ratio for U.S. home buyers in 2024, showing approval percentages across different DTI ranges from less than 20% to more than 50%

  14. Mortgage repayment affordability

    • ons.gov.uk
    • cy.ons.gov.uk
    xlsx
    Updated Mar 19, 2020
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    Office for National Statistics (2020). Mortgage repayment affordability [Dataset]. https://www.ons.gov.uk/peoplepopulationandcommunity/housing/datasets/mortgagerepaymentaffordability
    Explore at:
    xlsxAvailable download formats
    Dataset updated
    Mar 19, 2020
    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

    Mortgage repayments as a percentage of monthly equivalised disposable household income, throughout the house price and income distribution.

  15. 2000 Decennial Census: H094 | MORTGAGE STATUS BY SELECTED MONTHLY OWNER...

    • data.census.gov
    Updated Oct 20, 2023
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    DEC (2023). 2000 Decennial Census: H094 | MORTGAGE STATUS BY SELECTED MONTHLY OWNER COSTS AS A PERCENTAGE OF HOUSEHOLD INCOME IN 1999 [23] (DEC Summary File 3) [Dataset]. https://data.census.gov/table/DECENNIALSF32000.H094?tid=DECENNIALSF32000.H094
    Explore at:
    Dataset updated
    Oct 20, 2023
    Dataset provided by
    United States Census Bureauhttp://census.gov/
    Authors
    DEC
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Time period covered
    2000
    Description

    NOTE: Data based on a sample except in P3, P4, H3, and H4. For.information on confidentiality protection, sampling error,.nonsampling error, definitions, and count corrections see.http://www.census.gov/prod/cen2000/doc/sf3.pdf

  16. undefined undefined: undefined | undefined (undefined)

    • data.census.gov
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    United States Census Bureau, undefined undefined: undefined | undefined (undefined) [Dataset]. https://data.census.gov/table/ACSDT1Y2024.B25091?q=United+States+Business+and+Economy&g=310XX00US17200_010XX00US
    Explore at:
    Dataset provided by
    United States Census Bureauhttp://census.gov/
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    Key Table Information.Table Title.Mortgage Status by Selected Monthly Owner Costs as a Percentage of Household Income in the Past 12 Months.Table ID.ACSDT1Y2024.B25091.Survey/Program.American Community Survey.Year.2024.Dataset.ACS 1-Year Estimates Detailed Tables.Source.U.S. Census Bureau, 2024 American Community Survey, 1-Year Estimates.Dataset Universe.The dataset universe of the American Community Survey (ACS) is the U.S. resident population and housing. For more information about ACS residence rules, see the ACS Design and Methodology Report. Note that each table describes the specific universe of interest for that set of estimates..Methodology.Unit(s) of Observation.American Community Survey (ACS) data are collected from individuals living in housing units and group quarters, and about housing units whether occupied or vacant. For more information about ACS sampling and data collection, see the ACS Design and Methodology Report..Geography Coverage.ACS data generally reflect the geographic boundaries of legal and statistical areas as of January 1 of the estimate year. For more information, see Geography Boundaries by Year.Estimates of urban and rural populations, housing units, and characteristics reflect boundaries of urban areas defined based on 2020 Census data. As a result, data for urban and rural areas from the ACS do not necessarily reflect the results of ongoing urbanization..Sampling.The ACS consists of two separate samples: housing unit addresses and group quarters facilities. Independent housing unit address samples are selected for each county or county-equivalent in the U.S. and Puerto Rico, with sampling rates depending on a measure of size for the area. For more information on sampling in the ACS, see the Accuracy of the Data document..Confidentiality.The Census Bureau has modified or suppressed some estimates in ACS data products to protect respondents' confidentiality. Title 13 United States Code, Section 9, prohibits the Census Bureau from publishing results in which an individual's data can be identified. For more information on confidentiality protection in the ACS, see the Accuracy of the Data document..Technical Documentation/Methodology.Information about the American Community Survey (ACS) can be found on the ACS website. Supporting documentation including code lists, subject definitions, data accuracy, and statistical testing, and a full list of ACS tables and table shells (without estimates) can be found on the Technical Documentation section of the ACS website.Sample size and data quality measures (including coverage rates, allocation rates, and response rates) can be found on the American Community Survey website in the Methodology section.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. The value shown here is the 90 percent margin of error. The margin of error can be interpreted roughly as providing a 90 percent probability that the interval defined by the estimate minus the margin of error and the estimate plus the margin of error (the lower and upper confidence bounds) contains the true value. In addition to sampling variability, the ACS estimates are subject to nonsampling error (for a discussion of nonsampling variability, see ACS Technical Documentation). The effect of nonsampling error is not represented in these tables.Users must consider potential differences in geographic boundaries, questionnaire content or coding, or other methodological issues when comparing ACS data from different years. Statistically significant differences shown in ACS Comparison Profiles, or in data users' own analysis, may be the result of these differences and thus might not necessarily reflect changes to the social, economic, housing, or demographic characteristics being compared. For more information, see Comparing ACS Data..Weights.ACS estimates are obtained from a raking ratio estimation procedure that results in the assignment of two sets of weights: a weight to each sample person record and a weight to each sample housing unit record. Estimates of person characteristics are based on the person weight. Estimates of family, household, and housing unit characteristics are based on the housing unit weight. For any given geographic area, a characteristic total is estimated by summing the weights assigned to the persons, households, families or housing units possessing the characteristic in the geographic area. For more information on weighting and estimation in the ACS, see the Accuracy of the Data document.Although the American Community Survey (ACS) produces population, demographic and housing unit estimates, the decennial census is the official source of population totals for April 1st of each decennial year. In between censuses, the Census Bureau's Population Estimates Program produces and disseminates the official estimates of the pop...

  17. F

    Household Debt Service Payments as a Percent of Disposable Personal Income

    • fred.stlouisfed.org
    json
    Updated Sep 19, 2025
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    (2025). Household Debt Service Payments as a Percent of Disposable Personal Income [Dataset]. https://fred.stlouisfed.org/series/TDSP
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    jsonAvailable download formats
    Dataset updated
    Sep 19, 2025
    License

    https://fred.stlouisfed.org/legal/#copyright-public-domainhttps://fred.stlouisfed.org/legal/#copyright-public-domain

    Description

    Graph and download economic data for Household Debt Service Payments as a Percent of Disposable Personal Income (TDSP) from Q1 1980 to Q2 2025 about disposable, payments, personal income, debt, percent, households, personal, income, services, and USA.

  18. Real estate Banking - AI Capstone Project

    • kaggle.com
    zip
    Updated Jul 30, 2023
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    Deependra Verma (2023). Real estate Banking - AI Capstone Project [Dataset]. https://www.kaggle.com/deependraverma13/real-estate-banking-ai-capstone-project
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    zip(10639694 bytes)Available download formats
    Dataset updated
    Jul 30, 2023
    Authors
    Deependra Verma
    Description

    DESCRIPTION

    A banking institution requires actionable insights into mortgage-backed securities, geographic business investment, and real estate analysis. The mortgage bank would like to identify potential monthly mortgage expenses for each region based on monthly family income and rental of the real estate. A statistical model needs to be created to predict the potential demand in dollars amount of loan for each of the region in the USA. Also, there is a need to create a dashboard which would refresh periodically post data retrieval from the agencies. The dashboard must demonstrate relationships and trends for the key metrics as follows: number of loans, average rental income, monthly mortgage and owner’s cost, family income vs mortgage cost comparison across different regions. The metrics described here do not limit the dashboard to these few. Dataset Description

    Variables

    Description Second mortgage Households with a second mortgage statistics Home equity 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, and property taxes statistics Gross Rent Contract rent plus the estimated average monthly cost of utility features High school Graduation High school graduation statistics Population Demographics Population demographics 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 Project Task: Week 1

    Data Import and Preparation:

    Import data.

    Figure out the primary key and look for the requirement of indexing.

    Gauge the fill rate of the variables and devise plans for missing value treatment. Please explain explicitly the reason for the treatment chosen for each variable.

    Exploratory Data Analysis (EDA):

    Perform debt analysis. You may take the following steps:

    Explore the top 2,500 locations where the percentage of households with a second mortgage is the highest and percent ownership is above 10 percent. Visualize using geo-map. You may keep the upper limit for the percent of households with a second mortgage to 50 percent

    Use the following bad debt equation:

    Bad Debt = P (Second Mortgage ∩ Home Equity Loan) Bad Debt = second_mortgage + home_equity - home_equity_second_mortgage Create pie charts to show overall debt and bad debt

    Create Box and whisker plot and analyze the distribution for 2nd mortgage, home equity, good debt, and bad debt for different cities

    Create a collated income distribution chart for family income, house hold income, and remaining income

    Perform EDA and come out with insights into population density and age. You may have to derive new fields (make sure to weight averages for accurate measurements):

    Use pop and ALand variables to create a new field called population density

    Use male_age_median, female_age_median, male_pop, and female_pop to create a new field called median age

    Visualize the findings using appropriate chart type

    Create bins for population into a new variable by selecting appropriate class interval so that the number of categories don’t exceed 5 for the ease of analysis.

    Analyze the married, separated, and divorced population for these population brackets

    Visualize using appropriate chart type

    Please detail your observations for rent as a percentage of income at an overall level, and for different states.

    Perform correlation analysis for all the relevant variables by creating a heatmap. Describe your findings.

    Project Task: Week 2

    Data Pre-processing:

    The economic multivariate data has a significant number of measured variables. The goal is to find where the measured variables depend on a number of smaller unobserved common factors or latent variables.

    Each variable is assumed to be dependent upon a linear combination of the common factors, and the coefficients are known as loadings. Each measured variable also includes a component due to independent random variability, known as “specific variance” because it is specific to one variable. Obtain the common factors and then plot the loadings. Use factor analysis to find latent variables in our dataset and gain insight into the linear relationships in the data.

      Following are the list of latent variables:
    

    Highschool graduation rates

    Median population age

    Second mortgage statistics

    Percent own

    Bad debt expense

    Data Modeling :

    Build a linear Regression model to predict the total monthly expenditure for home mortgages loan.

      Please refer deplotment_RE.xlsx. Column hc_mortgage_mean is predicted variable. This is the mean monthly mortgage and owner costs of specified geographical location.
    
      Note: Exclude loans from prediction model which have NaN (Not a Numb...
    
  19. Census of Population and Housing, 2000 [United States]: 5-Percent Public Use...

    • icpsr.umich.edu
    ascii, sas, spss +1
    Updated Jul 22, 2005
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    National Archive of Computerized Data on Aging (2005). Census of Population and Housing, 2000 [United States]: 5-Percent Public Use Microdata Sample: Elderly Households Extract [Dataset]. http://doi.org/10.3886/ICPSR04204.v2
    Explore at:
    sas, stata, spss, asciiAvailable download formats
    Dataset updated
    Jul 22, 2005
    Dataset provided by
    Inter-university Consortium for Political and Social Researchhttps://www.icpsr.umich.edu/web/pages/
    Authors
    National Archive of Computerized Data on Aging
    License

    https://www.icpsr.umich.edu/web/ICPSR/studies/4204/termshttps://www.icpsr.umich.edu/web/ICPSR/studies/4204/terms

    Time period covered
    2000
    Area covered
    Tennessee, Puerto Rico, District of Columbia, North Carolina, New Jersey, Rhode Island, Hawaii, Idaho, Wisconsin, Alabama
    Description

    This is a special extract of the 2000 Census 5-Percent Public Use Microdata Samples (PUMS) created by the National Archive of Computerized Data on Aging (NACDA). The file combines the individual 5-percent state files for all 50 states, the District of Columbia, and Puerto Rico as released by the United States Census Bureau into a single analysis file. The file contains information on all households that contain at least one person aged 65 years or more in residence as of the 2000 Census enumeration. The file contains individual records on all persons aged 65 and older living in households as well as individual records for all other members residing in each of these households. Consequently, this file can be used to examine both the characteristics of the elderly in the United States as well as the characteristics of individuals who co-reside with persons aged 65 and older as of the year 2000. All household variables from the household-specific "Household record" of the 2000 PUMS are appended to the end of each individual level record. This file is not a special product of the Census Bureau and is not a resample of the PUMS data specific to the elderly population. While it is comparable to the 1990 release CENSUS OF POPULATION AND HOUSING, 1990: [UNITED STATES]: PUBLIC USE MICRODATA SAMPLE: 3-PERCENT ELDERLY SAMPLE (ICPSR 6219), the sampling procedures and weights for the 2000 file reflect the methodology that applies to the 5-percent PUMS release CENSUS OF POPULATION AND HOUSING, 2000 [UNITED STATES]: PUBLIC USE MICRODATA SAMPLE: 5-PERCENT SAMPLE (ICPSR 13568). Person variables cover age, sex, relationship to householder, educational attainment, school enrollment, race, Hispanic origin, ancestry, language spoken at home, citizenship, place of birth, year of immigration, place of residence in 1985, marital status, number of children ever born, military service, mobility and personal care limitation, work limitation status, employment status, occupation, industry, class of worker, hours worked last week, weeks worked in 1989, usual hours worked per week, temporary absence from work, place of work, time of departure for work, travel time to work, means of transportation to work, total earnings, total income, wages and salary income, farm and nonfarm self-employment income, Social Security income, public assistance income, retirement income, and rent, dividends, and net rental income. Housing variables include area type, state and area of residence, farm/nonfarm status, type of structure, year structure was built, vacancy and boarded-up status, number of rooms and bedrooms, presence or absence of a telephone, presence or absence of complete kitchen and plumbing facilities, type of sewage facilities, type of water source, type of heating fuel used, property value, tenure, year moved into house/apartment, type of household/family, type of group quarters, household language, number of persons in the household, number of persons and workers in the family, status of mortgage, second mortgage, and home equity loan, number of vehicles available, household income, sales of agricultural products, payments for rent, mortgage and property tax, condominium fees, mobile home costs, and cost of electricity, water, heating fuel, and flood/fire/hazard insurance.

  20. Negative Equity in U.S. Housing Market

    • kaggle.com
    zip
    Updated Jan 10, 2023
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    The Devastator (2023). Negative Equity in U.S. Housing Market [Dataset]. https://www.kaggle.com/datasets/thedevastator/negative-equity-in-u-s-housing-market-2017-summa
    Explore at:
    zip(6592634 bytes)Available download formats
    Dataset updated
    Jan 10, 2023
    Authors
    The Devastator
    Area covered
    United States
    Description

    Negative Equity in U.S. Housing Market

    Measuring Home Values, Debt, and Credit Risk

    By Zillow Data [source]

    About this dataset

    This dataset, Negative Equity in the US Housing Market, provides an in-depth look into the negative equity occurring across the United States during this single quarter. Included are metrics such as total amount of negative equity in millions of dollars, total number of homes in negative equity, percentage of homes with mortgages that are in negative equity and more. These data points provide helpful insights into both regional and national trends regarding the prevalence and rate of home mortgage delinquency stemming from a diminishment of value from peak levels.

    Home types available for analysis include 'all homes', condos/co-ops, multifamily units containing five or more housing units as well as duplexes/triplexes. Additionally, Cash buyers rates for particular areas can also be determined by referencing this collection. Further metrics such as mortgage affordability rates and impacts on overall indebtedness are readily calculated using information related to Zillow's Home Value Index (ZHVI) forecast methodology and TransUnion data respectively.

    Other variables featured within this dataset include characteristics like region type (i.e city, county ..etc), size rank based on population values , percentage change in ZHVI since peak levels as well as loan-to-value ratio greater than 200 across all regions constituted herein (NE). Moreover Zillow's own Secondary Mortgage Market Survey data is utilized to acquire average mortgage quote rates while correlative Census Bureau NCHS median household income figures represent typical assessable proportions between wages and debt obligations . So whether you're looking to assess effects along metro lines or detailed buffering through zip codes , this database should prove sufficient for insightful explorations! Nonetheless users must strictly adhere to all conditions encompassed within Terms Of Use commitments put forth by our lead provider before accessing any resources included herewith

    More Datasets

    For more datasets, click here.

    Featured Notebooks

    • 🚨 Your notebook can be here! 🚨!

    Research Ideas

    • Analyzing regional and state trends in negative equity: Analyze geographic differences in the percentage of mortgages “underwater”, total amount of negative equity, number of homes at least 90 days late, and other key indicators to provide insight into the factors influencing negative equity across regions, states and cities.
    • Tracking the recovery rate over time: Track short-term changes in numbers related to negative equity (e.g., region or area ZHVI Change from Peak) to monitor recovery rates over time as well as how different policy interventions are affecting homeownership levels in affected areas.
    • Exploring best practices for promoting housing affordability: Compare affordability metrics (e.g., mortgage payments, price-to-income ratios) across different geographic locations over time to identify best practices for empowering homeowners and promoting stability within the housing market while reducing local inequality impacts related to availability of affordable housing options and access to credit markets like mortgages/loans etc

    Acknowledgements

    If you use this dataset in your research, please credit the original authors. Data Source

    License

    See the dataset description for more information.

    Columns

    File: NESummary_2017Q1_Public.csv | Column name | Description | |:------------------------------------------------|:-----------------------------------------------------------------------------------------------------------------------------------| | RegionType | The type of region (e.g., city, county, metro etc.) (String) | | City | Name of the city (String) | | County | Name of the county (String) | | State | Name of the state (String) | | Metro ...

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Statista (2025). Breakdown of home loan borrowers in Japan 2023, by household income and interest rate [Dataset]. https://www.statista.com/statistics/1297407/japan-home-loan-borrower-distribution-by-household-income-and-interest-rate-type/
Organization logo

Breakdown of home loan borrowers in Japan 2023, by household income and interest rate

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Dataset updated
Nov 29, 2025
Dataset authored and provided by
Statistahttp://statista.com/
Time period covered
Apr 28, 2023 - May 10, 2023
Area covered
Japan
Description

According to a survey conducted between April and May 2023, around **** percent of respondents in Japan who took out variable-rate home loans had a household income of ******************** Japanese yen. The majority of home loan borrowers had a yearly household income of *************************************** yen, regardless of the type of interest rate selected.

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