International audienceWhile official statistics provide lagged and aggregate information on the housing market, extensive information is available publicly on real-estate websites. By web-scraping them for the UK on a daily basis, this paper extracts a large database from which we build timely and highly granular indicators. One originality of the dataset is to focus on the supply side of the housing market, allowing to compute innovative indicators reflecting the sellers' perspective such as the number of new listings posted or how prices fluctuate over time for existing listings. Matching listing prices in our dataset with transacted prices from the notarial database, using machine learning, also measures the negotiation margin of buyers....
International audiencePurpose The article analyzes the effects of the coronavirus disease 2019 (COVI...
House price indices are difficult to compute because houses are essentially unique, nonreplicable go...
In this article, we describe a house price index algorithm which requires only sparse and frugal dat...
International audienceWhile official statistics provide lagged and aggregate information on the hous...
International audienceWhile official statistics provide lagged and aggregate information on the hous...
Abstract As the COVID-19 pandemic came unexpectedly, many real estate experts claimed that the prope...
In this article we employ detailed internet search data to examine price and liquidity dynamics of t...
We employ detailed internet search data to examine price and liquidity dynamics of the Dutch housing...
In this paper we created a novel framework for understanding housing affordability in England using ...
The residential property market accounts for a substantial proportion of UKeconomic activity. Howeve...
Machine learning algorithms are being used for multiple real-life applications and in research. As a...
In this paper, the authors construct a unique data set of Internet offer prices for flats in 48 larg...
This work describes how open data sources were geospatially linked to create a machine learning mode...
In the present paper, a survey is being made of the areas, in which the use of Web scraping is neces...
Abstract Introduction Mass appraisals in the rental housing market are far less common than those in...
International audiencePurpose The article analyzes the effects of the coronavirus disease 2019 (COVI...
House price indices are difficult to compute because houses are essentially unique, nonreplicable go...
In this article, we describe a house price index algorithm which requires only sparse and frugal dat...
International audienceWhile official statistics provide lagged and aggregate information on the hous...
International audienceWhile official statistics provide lagged and aggregate information on the hous...
Abstract As the COVID-19 pandemic came unexpectedly, many real estate experts claimed that the prope...
In this article we employ detailed internet search data to examine price and liquidity dynamics of t...
We employ detailed internet search data to examine price and liquidity dynamics of the Dutch housing...
In this paper we created a novel framework for understanding housing affordability in England using ...
The residential property market accounts for a substantial proportion of UKeconomic activity. Howeve...
Machine learning algorithms are being used for multiple real-life applications and in research. As a...
In this paper, the authors construct a unique data set of Internet offer prices for flats in 48 larg...
This work describes how open data sources were geospatially linked to create a machine learning mode...
In the present paper, a survey is being made of the areas, in which the use of Web scraping is neces...
Abstract Introduction Mass appraisals in the rental housing market are far less common than those in...
International audiencePurpose The article analyzes the effects of the coronavirus disease 2019 (COVI...
House price indices are difficult to compute because houses are essentially unique, nonreplicable go...
In this article, we describe a house price index algorithm which requires only sparse and frugal dat...