用于大规模评估房地产数据的机器学习算法比较

Sibel Canaz Sevgen, Yeşim Tanrivermiş
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摘要

近年来,机器学习算法已被用于大规模房地产评估。在本研究中,5 种机器学习算法被用于住宅类型的房地产评估。本研究中用于大规模评估的机器学习算法包括人工神经网络(ANN)、随机森林(RO)、多元回归分析(MRA)、K-最近邻(k-nn)和支持向量回归(SVR)。为了检验这项研究,使用了从安卡拉中心区收集的房地产数据。本研究的主要目的是找出哪种机器学习算法能为大规模房地产评估提供最佳结果,并揭示影响房地产价格的最重要变量。根据在安卡拉市获得的结果,在住宅类房地产的大规模评估中,最佳算法是 RF 算法,其次分别是 ANN、k-nn 和线性回归算法。根据住宅房地产的评估结果,得出的结论是供暖和与重要场所的距离对价值的影响最大。
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Comparison of Machine Learning Algorithms for Mass Appraisal of Real Estate Data
In recent years, machine learning algorithms have been used in the mass appraisal of real estate. In this study, 5 machine learning algorithms are used for residential type real estate. Machine learning algorithms used for mass appraisal in this study are Artificial Neural Networks (ANN), Random Forest (RO), Multiple Regression Analysis (MRA), K-Nearest Neighborhood (k-nn), Support Vector Regression (SVR). To test the study, real estate data collected from the central districts of Ankara, were used. The main purpose of this study is to find out which machine learning algorithm gives the best results for the mass appraisal of real estates and to reveal the most important variables that affect the prices of real estate. According to the results obtained for the city of Ankara, it was observed that the best algorithm for mass appraisal is RF in residential-type real estates, followed by the ANN, k-nn, and linear regression algorithms, respectively. According to the results obtained from the residential real estate, it was concluded that heating and distances to places of importance had the greatest effect on the value.
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