Abstract

Real estate price prediction is crucial for the establishment of real estate policies and can help real estate owners and agents make informative decisions. The aim of this study is to employ actual transaction data and machine learning models to predict prices of real estate. The actual transaction data contain attributes and transaction prices of real estate that respectively serve as independent variables and dependent variables for machine learning models. The study employed four machine learning models-namely, least squares support vector regression (LSSVR), classification and regression tree (CART), general regression neural networks (GRNN), and backpropagation neural networks (BPNN), to forecast real estate prices. In addition, genetic algorithms were used to select parameters of machine learning models. Numerical results indicated that the least squares support vector regression outperforms the other three machine learning models in terms of forecasting accuracy. Furthermore, forecasting results generated by the least squares support vector regression are superior to previous related studies of real estate price prediction in terms of the average absolute percentage error. Thus, the machine learning-based model is a substantial and feasible way to forecast real estate prices, and the least squares support vector regression can provide relatively competitive and satisfactory results.

Highlights

  • The real estate market is one of the most crucial components of any national economy.observations of the real estate market and accurate predictions of real estate prices are helpful for real estate buyers and sellers as well as economic specialists

  • This study did not take qualitative factors influencing real estate prices into considerations and used quantitative data gathered from actual transaction data recording details of real estate transaction data in Taiwan

  • The computation results revealed that four machine learning models can result in better results with selected independent variables

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Summary

Introduction

The real estate market is one of the most crucial components of any national economy.observations of the real estate market and accurate predictions of real estate prices are helpful for real estate buyers and sellers as well as economic specialists. Real estate forecasting is a complicated and difficult task owing to many direct and indirect factors that inevitably influence the accuracy of predictions. Factors influencing real estate prices could be quantitative or qualitative [1]. The quantitative factors possibly include macroeconomic factors [2], business cycles [3], and real estate attributes [4]. Attributes of real estate, for example, includes past sale prices, land area, years of constructions, floor space, surface area, number of floors and building conditions [1,4].

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