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TwitterWhile the share of Australian households occupied by homeowners without a mortgage has decreased overall since financial year 2001, the value has fluctuated in recent years to sit at 29.5 percent in financial year 2020. Homeowners in Australia have had to compete with rising housing related costs, with the high house price to income ratio in recent years.
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TwitterOur US Home Ownership 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 various 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.
Consumer Graph 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).
Consumer Graph 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.
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The file is processed via National Change of Address (NCOA) to ensure deliverability. Additionally, the data is passed against suppression files to eliminate consumers or telephone numbers as appropriate such as Decease File, State Attorney General (SAG) data, the Direct Marketing Association's (DMA) do-not-mail and do-not-call lists, and the national FTC do-not-call file.
Selections include mortgage loan and property attributes along with household, individual and neighborhood demographics.
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Graph and download economic data for Consumer Unit Characteristics: Percent Homeowner without Mortgage by Housing Tenure: Home Owner (CXU980240LB1702M) from 1984 to 2023 about consumer unit, homeownership, mortgage, percent, housing, and USA.
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The Home Mortgage Disclosure Act (HMDA) database (Consumer Financial Protection Bureau, 2022) has compiled mortgage lending data since 1981, but the collection and dissemination methods have changed over time (Federal Financial Institutions Examination Council, 2018), creating barriers to conducting longitudinal analyses. This HMDA Longitudinal Dataset (HLD) organizes and standardizes information across different eras of HMDA data collection between 1981 and 2021, enabling such analysis. This collection contains two types of datasets: 1) HMDA aggregated data by census tract for each decade and 2) HMDA aggregated data by census tract for individual years. Items for analysis include borrower income values, mortgages by loan type (e.g., conventional, Federal Housing Administration (FHA), Veterans Affairs (VA), refinances), and mortgages by borrower race and gender.
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Graph and download economic data for Consumer Unit Characteristics: Percent Homeowner without Mortgage by Age: from Age 25 to 34 (CXU980240LB0403M) from 1984 to 2023 about consumer unit, age, homeownership, 25 years +, mortgage, percent, and USA.
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TwitterThe mortgage prevalence among homeowners in the 30 European countries in the ranking varied widely in 2024. About ** percent of the total population in Norway was a homeowner, with **** percent paying out a mortgage loan. Conversely, only *** percent of households in Romania had a mortgage, with nearly **** percent being homeowners. Meanwhile, an average of **** percent of the total population within the EU-27 was an owner-occupant with a mortgage or housing loan. Homeownership depends on multiple factors, such as housing policy, the macroeconomic situation, the state of the housing sector, and the availability of finance. Countries with more developed mortgage markets tend to have lower mortgage interest rates.
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TwitterMortgage Assignment & Release Data refers to information related to the assignment and release of mortgage loans. It provides valuable insights into the transfer of mortgage ownership from one party to another and the subsequent release of the mortgage lien. This data can be essential for various industries, including banking, real estate, legal services, and mortgage lending, enabling them to make informed decisions and mitigate risks associated with mortgage transactions.
What is Assignment and Release Data?
Assignment Data – Assignment data pertains to the transfer of ownership rights of a mortgage loan from one entity to another. This transfer typically occurs when a lender sells or transfers a mortgage loan to another financial institution, such as a bank, credit union, or mortgage-backed security issuer. Assignment data includes information such as the parties involved, the effective date of the assignment, and any relevant terms or conditions.
Release Data – Release data involves the release or satisfaction of a mortgage lien on a property. When a mortgage loan is fully paid off or otherwise satisfied, the lender releases the mortgage lien, allowing the property owner to have clear title. Release data provides details about the release, including the date of release, the parties involved, and any legal documentation associated with the release.
Assignment & Release Property Details:
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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
For more datasets, click here.
- 🚨 Your notebook can be here! 🚨!
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
- 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
If you use this dataset in your research, please credit the original authors. Data Source
See the dataset description for more information.
File: MortgageRateJumboFixed.csv | Column name | Description | |:---------------------------|:---------------------------------------------------------------------------------------------------------------| | Date | The date of the mortgage rate. (Date) | | TimePeriod | The time period of the ...
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Mortgage Application in the United States increased by 0.20 percent in the week ending November 21 of 2025 over the previous week. This dataset provides - United States MBA Mortgage Applications - actual values, historical data, forecast, chart, statistics, economic calendar and news.
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TwitterCumulation of monthly loans over the year by location (library floors), reader types (by age and type of subscription), type of copy, places of residence of readers.
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TwitterKinderData Mortgage & Homeowner Insights Dataset provides nationwide coverage of residential properties and their associated mortgage records, combining verified ownership, property, and lien data into one unified view. Updated regularly from assessor, recorder, and mortgage servicing sources, this dataset enables powerful analytics for lenders, investors, and marketers seeking to understand equity, refinance potential, credit exposure, and property performance across the U.S.
KinderData’s mortgage data includes origination details, balance and rate information, lien hierarchy, and borrower attributes—allowing users to model LTV ratios, identify high-equity homeowners, and assess refinance or risk opportunities in real time. Built for precision and scale, the dataset is delivered analytics-ready for integration into CRM, underwriting, or marketing systems.
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Comprehensive dataset containing 6 verified Mortgage broker businesses in Free municipal consortium of Syracuse, Italy with complete contact information, ratings, reviews, and location data.
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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.
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...
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TwitterLike other Assessor and Recorder data sets from First American, BlackKnight, ATTOM or HouseCanary, we provide both residential real estate and commercial restate data on homes, properties and pracels nationally.
Over 250M parcels, updated daily.
Access detailed property and tax assessment records with our extensive nationwide database. This robust dataset provides comprehensive information about residential and commercial properties, including detailed ownership, valuation, and transaction history. Core Data Elements:
Complete property identification (APNs, Tax IDs) Full property addresses with geocoding Precise latitude/longitude coordinates FIPS codes and Census tract information School district assignments
Property Characteristics:
Detailed lot dimensions and size Building square footage breakdowns Living area measurements Basement and attic specifications Garage and parking information Year built and effective year Number of bedrooms and bathrooms Room counts and configurations Building class and condition codes Construction details and materials Property amenities and features
Valuation Information:
Current AVM (Automated Valuation Model) values Confidence scores and value ranges Market valuations with dates Assessed values (land and improvements) Tax amounts and years Tax rate codes and districts Various tax exemption statuses
Transaction History:
Current and previous sale details Recording dates and document numbers Sale prices and price codes Buyer and seller information Multiple mortgage records including:
Loan amounts and terms Lender information Recording dates Interest rates Due dates Loan types and positions
Ownership Details:
Current owner information Corporate ownership indicators Owner-occupied status Mailing addresses Care of names Foreign address indicators
Legal Information:
Complete legal descriptions Subdivision details Lot and block numbers Zoning information Land use codes HOA information and fees
Property Status Indicators:
Vacancy flags Pre-foreclosure status Current listing status Price ranges Market position
Perfect For:
Real Estate Professionals
Property researchers Title companies Real estate attorneys Appraisers Market analysts
Financial Services
Mortgage lenders Insurance companies Investment firms Risk assessment teams Portfolio managers
Government & Planning
Urban planners Tax assessors Economic developers Policy researchers Municipal agencies
Data Analytics
Market researchers Data scientists Economic analysts GIS specialists Demographics experts
Data Delivery Features:
Multiple format options Regular updates Bulk download capability Custom field selection Geographic filtering API access available Standardized formatting Quality assured data
Quality Assurance:
Verified against public records Regular updates Standardized formatting Address verification Geocoding validation Duplicate removal Data normalization Quality control processes
This comprehensive property database provides unprecedented access to detailed property information, perfect for industry professionals requiring in-depth property data for analysis, research, or business development. Our data undergoes rigorous quality control processes to ensure accuracy and completeness, making it an invaluable resource for real estate professionals, financial institutions, and government agencies. Updated continuously from authoritative sources, this dataset offers the most current and accurate property information available in the market. Custom data extracts and specific geographic coverage options are available to meet your exact needs.
Weekly/Quarterly/Annual and One-time options are available for sale.
See our sample
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TwitterWith Versium REACH Demographic Append you will have access to many different attributes for enriching your data.
Basic, Household and Financial, Lifestyle and Interests, Political and Donor.
Here is a list of what sorts of attributes are available for each output type listed above:
Basic:
- Senior in Household
- Young Adult in Household
- Small Office or Home Office
- Online Purchasing Indicator
- Language
- Marital Status
- Working Woman in Household
- Single Parent
- Online Education
- Occupation
- Gender
- DOB (MM/YY)
- Age Range
- Religion
- Ethnic Group
- Presence of Children
- Education Level
- Number of Children
Household, Financial and Auto: - Household Income - Dwelling Type - Credit Card Holder Bank - Upscale Card Holder - Estimated Net Worth - Length of Residence - Credit Rating - Home Own or Rent - Home Value - Home Year Built - Number of Credit Lines - Auto Year - Auto Make - Auto Model - Home Purchase Date - Refinance Date - Refinance Amount - Loan to Value - Refinance Loan Type - Home Purchase Price - Mortgage Purchase Amount - Mortgage Purchase Loan Type - Mortgage Purchase Date - 2nd Most Recent Mortgage Amount - 2nd Most Recent Mortgage Loan Type - 2nd Most Recent Mortgage Date - 2nd Most Recent Mortgage Interest Rate Type - Refinance Rate Type - Mortgage Purchase Interest Rate Type - Home Pool
Lifestyle and Interests:
- Mail Order Buyer
- Pets
- Magazines
- Reading
- Current Affairs and Politics
- Dieting and Weight Loss
- Travel
- Music
- Consumer Electronics
- Arts
- Antiques
- Home Improvement
- Gardening
- Cooking
- Exercise
- Sports
- Outdoors
- Womens Apparel
- Mens Apparel
- Investing
- Health and Beauty
- Decorating and Furnishing
Political and Donor: - Donor Environmental - Donor Animal Welfare - Donor Arts and Culture - Donor Childrens Causes - Donor Environmental or Wildlife - Donor Health - Donor International Aid - Donor Political - Donor Conservative Politics - Donor Liberal Politics - Donor Religious - Donor Veterans - Donor Unspecified - Donor Community - Party Affiliation
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According to our latest research, the global Mortgage Data Standardization market size reached USD 1.47 billion in 2024, reflecting robust adoption across financial institutions and regulatory bodies. The market is expected to expand at a CAGR of 13.2% from 2025 to 2033, reaching a projected value of USD 4.13 billion by 2033. This growth is primarily driven by the increasing demand for seamless data integration, regulatory compliance, and operational efficiency in mortgage processes worldwide.
One of the key growth factors propelling the Mortgage Data Standardization market is the surge in regulatory requirements and the intensification of compliance standards in the global mortgage sector. Financial institutions are under mounting pressure to ensure that their data management practices adhere to evolving government mandates, such as the Home Mortgage Disclosure Act (HMDA) in the United States and similar frameworks in Europe and Asia Pacific. These regulations necessitate the adoption of standardized data formats and reporting protocols, which enable more accurate, transparent, and efficient exchanges of mortgage information. As a result, mortgage lenders, banks, and other stakeholders are increasingly investing in advanced software, platforms, and services that facilitate mortgage data standardization, thereby minimizing compliance risks and reducing operational costs.
Another significant growth driver is the rapid digitization and automation of mortgage workflows. As the mortgage industry transitions from legacy systems to digital platforms, the need for standardized data becomes critical for interoperability and integration across various software applications. Mortgage data standardization enables seamless communication between loan origination, servicing, risk management, and analytics systems, thereby enhancing the overall customer experience and improving turnaround times. Furthermore, the proliferation of cloud-based solutions is accelerating this trend, as these platforms offer scalable, secure, and cost-effective means to manage standardized mortgage data across geographically dispersed operations.
Technological advancements in data analytics and artificial intelligence are also fueling the expansion of the Mortgage Data Standardization market. The integration of standardized data formats with advanced analytics tools empowers financial institutions to extract actionable insights, identify trends, and mitigate risks more effectively. By leveraging standardized mortgage data, organizations can enhance decision-making processes, improve loan quality, and optimize portfolio performance. This not only drives business growth but also fosters innovation in product offerings and service delivery, further strengthening the competitive landscape of the market.
From a regional perspective, North America continues to dominate the Mortgage Data Standardization market, accounting for the largest market share in 2024, followed by Europe and Asia Pacific. The United States, in particular, has witnessed significant investments in mortgage technology and regulatory compliance solutions, driven by stringent reporting requirements and a mature financial ecosystem. Meanwhile, emerging markets in Asia Pacific and Latin America are experiencing rapid growth, fueled by increasing mortgage penetration, government-led digitalization initiatives, and rising demand for efficient and transparent lending processes. As these regions continue to modernize their financial infrastructures, the adoption of mortgage data standardization solutions is expected to accelerate, contributing to the overall expansion of the global market.
The component segment of the Mortgage Data Standardization market is categorized into software, services, and platforms. Software solutions play a pivotal role in enabling financial institutions to standardize, validate, and manage mortgage data efficiently. These solutions encompass data integration tools, workflow automat
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Comprehensive proprietary research analyzing 312,367 assumable mortgage homes from 2023-2025 across all 50 states, including interest rates, savings analysis, state distribution, price ranges, and down payment requirements.
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TwitterWhile the share of Australian households occupied by homeowners without a mortgage has decreased overall since financial year 2001, the value has fluctuated in recent years to sit at 29.5 percent in financial year 2020. Homeowners in Australia have had to compete with rising housing related costs, with the high house price to income ratio in recent years.