网络实时监测房价:英国新冠肺炎危机

IF 1.4 3区 经济学 Q3 ECONOMICS
Jean-Charles Bricongne , Baptiste Meunier , Sylvain Pouget
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引用次数: 0

摘要

虽然官方统计数据提供了住房市场的滞后和汇总信息,但房地产网站上可以公开获得大量信息。通过每天为英国进行网络抓取,本文提取了一个大型数据库,我们从中构建了及时且高度精细的指标。该数据集的一个独创性是关注住房市场的供应端,允许计算反映卖家观点的创新指标,如发布的新房源数量或现有房源的价格如何随时间波动。使用机器学习将我们数据集中的挂牌价格与公证数据库中的交易价格相匹配,还可以测量买家的谈判保证金。在新冠肺炎危机期间,这些指标表明市场冻结和卖家的“观望”行为。他们还显示,封锁后,伦敦的挂牌价格持续下跌,但其他地区的挂牌价格有所上涨。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Web-scraping housing prices in real-time: The Covid-19 crisis in the UK

While 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. During the Covid-19 crisis, these indicators demonstrate the freezing of the market and the “wait-and-see” behaviour of sellers. They also show that listing prices after the lockdown experienced a continued decline in London but increased in other regions.

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来源期刊
CiteScore
3.30
自引率
4.20%
发文量
35
期刊介绍: The Journal of Housing Economics provides a focal point for the publication of economic research related to housing and encourages papers that bring to bear careful analytical technique on important housing-related questions. The journal covers the broad spectrum of topics and approaches that constitute housing economics, including analysis of important public policy issues.
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