What are tenants demanding the most? A machine learning approach for the prediction of time on market

被引:1
|
作者
Cajias, Marcelo [1 ,2 ]
Freudenreich, Anna [2 ]
机构
[1] PATRIZIA SE, Dept Investment Strategy & Res, Augsburg, Germany
[2] Univ Regensburg, Int Real Estate Business Sch, Regensburg, Germany
关键词
Residential; Housing; Time on market; Machine learning; Decision tree; Random forest; REAL-ESTATE; BIG DATA; RANDOM FOREST; DETERMINANTS; PRICE; MODEL; APPRAISAL;
D O I
10.1108/JPIF-09-2023-0083
中图分类号
F8 [财政、金融];
学科分类号
0202 ;
摘要
PurposeThis is the first article to apply a machine learning approach to the analysis of time on market on real estate markets.Design/methodology/approachThe random survival forest approach is introduced to the real estate market. The most important predictors of time on market are revealed and it is analyzed how the survival probability of residential rental apartments responds to these major characteristics.FindingsResults show that price, living area, construction year, year of listing and the distances to the next hairdresser, bakery and city center have the greatest impact on the marketing time of residential apartments. The time on market for an apartment in Munich is lowest at a price of 750 euro per month, an area of 60 m2, built in 1985 and is in a range of 200-400 meters from the important amenities.Practical implicationsThe findings might be interesting for private and institutional investors to derive real estate investment decisions and implications for portfolio management strategies and ultimately to minimize cash-flow failure.Originality/valueAlthough machine learning algorithms have been applied frequently on the real estate market for the analysis of prices, its application for examining time on market is completely novel. This is the first paper to apply a machine learning approach to survival analysis on the real estate market.
引用
收藏
页码:151 / 165
页数:15
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