Property Valuation using Machine Learning Algorithms: A Study in a Metropolitan-Area of Chile

Masías, VH.; Valle, MA.; Crespo, F.; Crespo, R.; Vargas, A.; Laengle, S.

Keywords: Machine Learning, Hedonic Pricing Models, Neural Network, Random Forest, Support Vector Machine, Property Valuation

Abstract

Machine learning techniques are applied to the analysis of real data on the new housing market of Santiago, Chile. Toe objective is to compare the predictive performance of the Neural Network, Random Forest and Support Vector Machine approaches with traditional Ordinary Least Squares Regression. The database for our analysis consists of a sample of 16,472 price records for new housing units or residential properties within the area covered. The results of the analysis show that Random Forest performed better than the other models in modeling housing prices. More generally, we conclude that machine learning techniques can provide a useful set of tools for acquiring information on housing markets.

Más información

Editorial: Selection at the AMSE Conference Santiago/Chile
Fecha de publicación: 2016
Página de inicio: 97
Página final: 105
Idioma: Inglés