This dataset was created by Bandhan Singh
https://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
House price prediction dataset
This dataset comprises housing data for various metropolitan cities of India. It includes: - Collection of prices of new and resale houses - The amenities provided for each house
This housing dataset is useful for a range of stakeholders, including real estate agents, property developers, buyers, renters, and researchers interested in analyzing housing markets and trends in metropolitan cities across India. It can be used for market analysis, price prediction, property recommendations, and various other real estate-related tasks.
Shape of dataset : (6207, 40)
https://www.googleapis.com/download/storage/v1/b/kaggle-user-content/o/inbox%2F11965067%2F75861c40e86a4d2d10c044be79542436%2FCapture.JPG?generation=1704918894425981&alt=media" alt="">
Github Link : https://github.com/TusharPaul01/House-Price-Prediction
For more such dataset & code check : https://www.kaggle.com/tusharpaul2001
The UK House Price Index is a National Statistic.
Download the full UK House Price Index data below, or use our tool to https://landregistry.data.gov.uk/app/ukhpi?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=tool&utm_term=9.30_16_07_25" class="govuk-link">create your own bespoke reports.
Datasets are available as CSV files. Find out about republishing and making use of the data.
This file includes a derived back series for the new UK HPI. Under the UK HPI, data is available from 1995 for England and Wales, 2004 for Scotland and 2005 for Northern Ireland. A longer back series has been derived by using the historic path of the Office for National Statistics HPI to construct a series back to 1968.
Download the full UK HPI background file:
If you are interested in a specific attribute, we have separated them into these CSV files:
https://publicdata.landregistry.gov.uk/market-trend-data/house-price-index-data/Average-prices-2025-05.csv?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=average_price&utm_term=9.30_16_07_25" class="govuk-link">Average price (CSV, 7.1MB)
https://publicdata.landregistry.gov.uk/market-trend-data/house-price-index-data/Average-prices-Property-Type-2025-05.csv?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=average_price_property_price&utm_term=9.30_16_07_25" class="govuk-link">Average price by property type (CSV, 15.4KB)
https://publicdata.landregistry.gov.uk/market-trend-data/house-price-index-data/Sales-2025-05.csv?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=sales&utm_term=9.30_16_07_25" class="govuk-link">Sales (CSV, 5.2KB)
https://publicdata.landregistry.gov.uk/market-trend-data/house-price-index-data/Cash-mortgage-sales-2025-05.csv?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=cash_mortgage-sales&utm_term=9.30_16_07_25" class="govuk-link">Cash mortgage sales (CSV, 4.9KB)
https://publicdata.landregistry.gov.uk/market-trend-data/house-price-index-data/First-Time-Buyer-Former-Owner-Occupied-2025-05.csv?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=FTNFOO&utm_term=9.30_16_07_25" class="govuk-link">First time buyer and former owner occupier (CSV, 4.5KB)
https://publicdata.landregistry.gov.uk/market-trend-data/house-price-index-data/New-and-Old-2025-05.csv?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=new_build&utm_term=9.30_16_07_25" class="govuk-link">New build and existing resold property (CSV, 11KB)
https://publicdata.landregistry.gov.uk/market-trend-data/house-price-index-data/Indices-2025-05.csv?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=index&utm_term=9.30_16_07_25" class="govuk-link">Index (CSV, 5.5KB)
https://publicdata.landregistry.gov.uk/market-trend-data/house-price-index-data/Indices-seasonally-adjusted-2025-05.csv?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=index_season_adjusted&utm_term=9.30_16_07_25" class="govuk-link">Index seasonally adjusted (CSV, 196KB)
https://publicdata.landregistry.gov.uk/market-trend-data/house-price-index-data/Average-price-seasonally-adjusted-2025-05.csv?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=average-price_season_adjusted&utm_term=9.30_16_07_25" class="govuk-link">Average price seasonally adjusted (CSV, 206KB)
<a rel="external" href="https://publicdata.landregistry.gov.uk/market-trend-data/house-price-index-data/Repossession-2025-05.csv?utm_medium=GOV.UK&utm_source=datadownload&utm_campaign=repossession&utm_term=9.30_16_07
https://crawlfeeds.com/privacy_policyhttps://crawlfeeds.com/privacy_policy
Explore the Redfin USA Properties Dataset, available in CSV format. This extensive dataset provides valuable insights into the U.S. real estate market, including detailed property listings, prices, property types, and more across various states and cities. Perfect for those looking to conduct in-depth market analysis, real estate investment research, or financial forecasting.
Key Features:
Who Can Benefit From This Dataset:
Download the Redfin USA Properties Dataset to access essential information on the U.S. housing market, ideal for professionals in real estate, finance, and data analytics. Unlock key insights to make informed decisions in a dynamic market environment.
Looking for deeper insights or a custom data pull from Redfin?
Send a request with just one click and explore detailed property listings, price trends, and housing data.
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Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
This research data file contains the necessary software and the dataset for estimating the missing prices of house units. This approach combines several machine learning techniques (linear regression, support vector regression, the k-nearest neighbors and a multi-layer perceptron neural network) with several dimensionality reduction techniques (non-negative factorization, recursive feature elimination and feature selection with a variance threshold). It includes the input dataset formed with the available house prices in two neighborhoods of Teruel city (Spain) in November 13, 2017 from Idealista website. These two neighborhoods are the center of the city and âEnsancheâ.
This dataset supports the research of the authors in the improvement of the setup of agent-based simulations about real-estate market. The work about this dataset has been submitted for consideration for publication to a scientific journal.
The open source python code is composed of all the files with the â.pyâ extension. The main program can be executed from the âmain.pyâ file. The âboxplotErrors.epsâ is a chart generated from the execution of the code, and compares the results of the different combinations of machine learning techniques and dimensionality reduction methods.
The dataset is in the âdataâ folder. The input raw data of the house prices are in the âdataRaw.csvâ file. These were shuffled into the âdataShuffled.csvâ file. We used cross-validation to obtain the estimations of house prices. The outputted estimations alongside the real values are stored in different files of the âdataâ folder, in which each filename is composed by the machine learning technique abbreviation and the dimensionality reduction method abbreviation.
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Indicators used in community profiles
This dataset was created by Sohaib Anwaar
Insurance companies collect multiple features of a House and select which houses can be insured and what amount they can charge the Premium from them. So here I have collected data from multiple insurance companies in USA where features with house prices are given
This data set has many property details from address to their location co ordinates nad many other features, use them to predict the House price
Multiple regression datasets have been published every one unique in their own way, Use of location coordinates and some other co-ordinates are new here.
The dataset is free to use for educational purposes and was converted to csv. It has around 2900 entries for house sales in Ames, Iowa with 79 features/variables, which are described here https://jse.amstat.org/v19n3/decock/DataDocumentation.txt. Dataset: "Ames Housing Data Set," submitted by Dean De Cock, Truman State university. Dataset obtained from the Journal of Statistics Education (http://jse.amstat.org/publications/jse). Accessed 2025-04-24. Used in education. For further information about reusing: https://jse.amstat.org/jse_users.htm
Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
Analysis of âUSA_Housing.csvâ provided by Analyst-2 (analyst-2.ai), based on source dataset retrieved from https://www.kaggle.com/aariyan101/usa-housingcsv on 12 November 2021.
--- No further description of dataset provided by original source ---
--- Original source retains full ownership of the source dataset ---
ttd22/house-price dataset hosted on Hugging Face and contributed by the HF Datasets community
This dataset was created by Alaa ELsayed-22
http://www.gnu.org/licenses/old-licenses/gpl-2.0.en.htmlhttp://www.gnu.org/licenses/old-licenses/gpl-2.0.en.html
This CSV dataset provides comprehensive information about house prices. It consists of 9,819 entries and 54 columns, offering a wealth of features for analysis. The dataset includes various numerical and categorical variables, providing insights into factors that influence house prices.
The key columns in the dataset are as follows:
In addition to these, the dataset contains several other features related to various amenities and facilities available in the houses, such as double-glazed windows, central air conditioning, central heating, waste disposal, furnished status, service elevators, and more.
By performing exploratory data analysis on this dataset using Python and the Pandas library, valuable insights can be gained regarding the relationships between different variables and the impact they have on house prices. Descriptive statistics, data visualization, and feature engineering techniques can be applied to uncover patterns and trends in the housing market.
This dataset serves as a valuable resource for real estate professionals, analysts, and researchers interested in understanding the factors that contribute to house prices and making informed decisions in the real estate market.
Open Database License (ODbL) v1.0https://www.opendatacommons.org/licenses/odbl/1.0/
License information was derived automatically
The housing affordability measure illustrates the relationship between income and housing costs. A household that spends 30% or more of its collective monthly income to cover housing costs is considered to be âhousing cost-burden[ed].â[1] Those spending between 30% and 49.9% of their monthly income are categorized as âmoderately housing cost-burden[ed],â while those spending more than 50% are categorized as âseverely housing cost-burden[ed].â[2]
How much a household spends on housing costs affects the householdâs overall financial situation. More money spent on housing leaves less in the household budget for other needs, such as food, clothing, transportation, and medical care, as well as for incidental purchases and saving for the future.
The estimated housing costs as a percentage of household income are categorized by tenure: all households, those that own their housing unit, and those that rent their housing unit.
Throughout the period of analysis, the percentage of housing cost-burdened renter households in Champaign County was higher than the percentage of housing cost-burdened homeowner households in Champaign County. All three categories saw year-to-year fluctuations between 2005 and 2023, and none of the three show a consistent trend. However, all three categories were estimated to have a lower percentage of housing cost-burdened households in 2023 than in 2005.
Data on estimated housing costs as a percentage of monthly income was sourced from the U.S. Census Bureauâs American Community Survey (ACS) 1-Year Estimates, which are released annually.
As with any datasets that are estimates rather than exact counts, it is important to take into account the margins of error (listed in the column beside each figure) when drawing conclusions from the data.
Due to the impact of the COVID-19 pandemic, instead of providing the standard 1-year data products, the Census Bureau released experimental estimates from the 1-year data in 2020. This includes a limited number of data tables for the nation, states, and the District of Columbia. The Census Bureau states that the 2020 ACS 1-year experimental tables use an experimental estimation methodology and should not be compared with other ACS data. For these reasons, and because data is not available for Champaign County, no data for 2020 is included in this Indicator.
For interested data users, the 2020 ACS 1-Year Experimental data release includes a dataset on Housing Tenure.
[1] Schwarz, M. and E. Watson. (2008). Who can afford to live in a home?: A look at data from the 2006 American Community Survey. U.S. Census Bureau.
[2] Ibid.
Sources: U.S. Census Bureau; American Community Survey, 2023 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using data.census.gov; (17 October 2024).; U.S. Census Bureau; American Community Survey, 2022 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using data.census.gov; (22 September 2023).; U.S. Census Bureau; American Community Survey, 2021 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using data.census.gov; (30 September 2022).; U.S. Census Bureau; American Community Survey, 2019 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using data.census.gov; (10 June 2021).; U.S. Census Bureau; American Community Survey, 2018 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using data.census.gov; (10 June 2021).;U.S. Census Bureau; American Community Survey, 2017 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (13 September 2018).; U.S. Census Bureau; American Community Survey, 2016 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (14 September 2017).; U.S. Census Bureau; American Community Survey, 2015 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (19 September 2016).; U.S. Census Bureau; American Community Survey, 2014 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (16 March 2016).; U.S. Census Bureau; American Community Survey, 2013 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (16 March 2016).; U.S. Census Bureau; American Community Survey, 2012 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (16 March 2016).; U.S. Census Bureau; American Community Survey, 2011 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (16 March 2016).; U.S. Census Bureau; American Community Survey, 2010 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (16 March 2016).; U.S. Census Bureau; American Community Survey, 2009 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (16 March 2016).; U.S. Census Bureau; American Community Survey, 2008 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; 16 March 2016).; U.S. Census Bureau; American Community Survey, 2007 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (16 March 2016).; U.S. Census Bureau; American Community Survey, 2006 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (16 March 2016).; U.S. Census Bureau; American Community Survey, 2005 American Community Survey 1-Year Estimates, Table B25106; generated by CCRPC staff; using American FactFinder; (16 March 2016).
This directory includes a few sample datasets to get you started.
california_housing_data*.csv is California housing data from the 1990 US Census; more information is available at: https://docs.google.com/document/d/e/2PACX-1vRhYtsvc5eOR2FWNCwaBiKL6suIOrxJig8LcSBbmCbyYsayia_DvPOOBlXZ4CAlQ5nlDD8kTaIDRwrN/pub
mnist_*.csv is a small sample of the MNIST database, which is described at: http://yann.lecun.com/exdb/mnist/
anscombe.json contains a copy of Anscombe's quartet; it was originally⊠See the full description on the dataset page: https://huggingface.co/datasets/ns-1/my-datayset.
Attribution-NonCommercial 4.0 (CC BY-NC 4.0)https://creativecommons.org/licenses/by-nc/4.0/
License information was derived automatically
High-quality, free real estate dataset from all around the United States, in CSV format. Over 10.000 records relevant to Real Estate investors, agents, and data scientists. We are working on complete datasets from a wide variety of countries. Don't hesitate to contact us for more information.
Referendum on Third Amendment of the Constitution Bill 1968 on the formation of Dail Constituencies
Open Data Commons Attribution License (ODC-By) v1.0https://www.opendatacommons.org/licenses/by/1.0/
License information was derived automatically
Phoenix housing data from the American Community Survey (ACS) 1-year estimates
Validation split of the Ames Housing Data Set (~10%). The dataset is free to use for educational purposes and was converted to csv. Original publication https://jse.amstat.org/v19n3/decock.pdf and dataset in txt format: https://jse.amstat.org/v19n3/decock/AmesHousing.txt
Test split of the Ames Housing Data Set (~10%). The dataset is free to use for educational purposes and was converted to csv. Original publication https://jse.amstat.org/v19n3/decock.pdf and dataset in txt format: https://jse.amstat.org/v19n3/decock/AmesHousing.txt
This dataset was created by Bandhan Singh