House price prediction modeling using machine learning techniques: a comparative study

IF 0.8 Q3 ECONOMICS Aestimum Pub Date : 2023-02-13 DOI:10.36253/aestim-13703
Ayten Yağmur, M. Kayakuş, M. Terzioğlu
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引用次数: 1

Abstract

In the literature, there are two basic approaches regarding the determination of house prices. One of them is the prediction of house price using macroeconomic variables in the country where the house is produced, and another one is the price prediction models, which we can express as micro-variables, by considering the features of the house. In this study, the price of the house was attempted to be predicted using machine learning methods by establishing a model with micro variables that reveal the features of the house. The study was conducted in Turkey’ Antalya province, where household housing demand of foreigners is also high. The house advertisements in locations belonging to the lower, middle- and upper-income groups were selected as the sample. In the results, it was observed that the artificial neural network (ANN) method made predictions with more meaningful results compared to support vector regression (SVR) and multiple linear regression (MLR). These results appear to be a viable model for institutions that supply housing, mediate housing sales, and provide housing financing and valuation. It is considered that this model, which can be used to predict fluctuating house prices, especially in developing countries, will regulate the housing market.
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基于机器学习技术的房价预测模型的比较研究
在文献中,关于房价的确定有两种基本方法。其中一种是使用房屋生产国的宏观经济变量来预测房价,另一种是价格预测模型,我们可以通过考虑房屋的特征来表示为微观变量。在这项研究中,通过建立一个带有揭示房屋特征的微变量的模型,试图使用机器学习方法来预测房屋的价格。这项研究是在土耳其安塔利亚省进行的,那里外国人的家庭住房需求也很高。我们选取了低、中、高收入人群所在地区的房屋广告作为样本。结果发现,人工神经网络(ANN)方法的预测结果比支持向量回归(SVR)和多元线性回归(MLR)更有意义。这些结果似乎是一个可行的模式,为机构提供住房,调解住房销售,提供住房融资和估值。人们认为,这一模型可用于预测房价波动,特别是在发展中国家,它将调节住房市场。
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来源期刊
Aestimum
Aestimum ECONOMICS-
CiteScore
2.30
自引率
0.00%
发文量
4
审稿时长
12 weeks
期刊介绍: Aestimum is a peer-reviewed Journal dedicated to the methodological study of appraisal and land economics. Established in 1976 by the Italian Association of Appraisers and Land Economists, which was legally recognized by Ministerial Decree, March 1993. Topics of interests comprise rural, urban and environmental appraisal, evaluation of public investments and land use planning. All the areas under discussion are addressed to the International scene. The interdisciplinary approach is one of the mainstays of this editorial project and all of the above mentioned topics are developed taking into consideration the economic, legal and urban planning aspects. Aestimum is biannual Journal and publishes articles both in Italian and English. Articles submitted are subjected to a double blind peer review process.
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