基于深度学习的房价预测:在台湾房地产市场的应用

Choujun Zhan, Zeqiong Wu, Yonglin Liu, Zefeng Xie, Wangling Chen
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引用次数: 5

摘要

随着房地产市场的急剧增长,预测房价不仅是企业的重要问题,也是国民的重要问题。然而,房价波动有很多影响因素。此外,房价与住房因素之间存在非线性关系。大多数计量经济或统计模型还不能捕捉非线性关系。因此,我们提出了基于深度学习方法的房价预测模型,该模型可以捕捉非线性关系。在这项工作中,我们构建了一个数据集,包括2013年1月至2018年12月台湾的住房属性数据和宏观经济数据。房屋属性数据包括“土地+建筑”(Type1)和“土地+建筑+公园”(Type2)两种类型的住房交易。宏观经济数据包括住房投资需求比、自住住房比、房价收入比、住房贷款负担率、住房议价空间比。然后,利用该数据集对基于深度学习算法BPNN和CNN的房价预测方法进行评估。实验结果表明,带有房屋特征的CNN预测效果最好。这项研究可以用来制定针对住房市场的有针对性的干预措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Housing prices prediction with deep learning: an application for the real estate market in Taiwan
The housing market is increasing huge, predicting housing prices is not only important for a business issue, but also for people. However, housing price fluctuations have a lot of influencing factors. Also, there is a non-linear relationship between housing prices and housing factors. Most econometric or statistical models cannot capture non-linear relationships yet. Therefore, we propose housing price prediction models based on deep learning methods, which can capture non-linear relationships. In this work, we construct a dataset, including the housing attributes data and macroeconomic data in Taiwan from January 2013 to December 2018. The housing attributes data includes two types of housing transactions, which are “land + building” (Type1) and “land + building + park” (Type2). Macroeconomic data includes housing investment demand ratio, owner-occupier housing ratio, housing price to income ratio, housing loan burden ratio, and housing bargaining space ratio. Then, this dataset is utilized to evaluate the prediction methods based on deep learning algorithms BPNN and CNN to predict housing prices. Experimental results show that CNN with housing features has the best prediction effect. This study can be used to develop targetted interventions aimed at the housing market.
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