Applying dynamic Bayesian tree in property sales price estimation

Mehrdad Ziaee Nejad, Jie Lu, Vahid Behbood
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引用次数: 10

Abstract

Accurate prediction of Residential Property Sale Price is very important and significant in the operation of the real estate market. Property sellers and buyers/Investors wish to know a fair value for their properties in particular at the time of the sales transaction. The main reason to build an Automated Valuation Model is to be accurate enough to replace human. To select a most suitable model for the property sale price prediction, this paper examined seven Tree-based machine learning models including Dynamic Bayesian Tree (online learning method), Random Forest, Stochastic Gradient Boosting, CART, Bagged CART, Tree Bagged Ensembles and Boosted Tree (batch learning methods) by comparing their RMSE and MAE performances. The performance of these models are tested on 1967 records of unit sales from 19 suburbs of Sydney, Australia. The main purpose of this study is to compare the performance of batch models with the online model. The results demonstrated that Dynamic Bayesian Tree as an online model stands in the middle of batch models based on the root mean square error (RMSE) and mean absolute error (MAE). It shows using online model for estimating the property sale price is reasonable for real world application.
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动态贝叶斯树在房地产销售价格估计中的应用
住宅物业销售价格的准确预测在房地产市场运行中具有十分重要的意义。物业卖家和买家/投资者都希望知道其物业的公允价值,特别是在销售交易时。建立一个自动化评估模型的主要原因是要足够准确,以取代人工。为了选择最适合房地产销售价格预测的模型,本文研究了7种基于树的机器学习模型,包括动态贝叶斯树(在线学习方法)、随机森林、随机梯度增强、CART、Bagged CART、Tree Bagged Ensembles和Boosting Tree(批处理学习方法),并比较了它们的RMSE和MAE性能。这些车型的性能是根据1967年澳大利亚悉尼19个郊区的单位销售记录进行测试的。本研究的主要目的是比较批处理模型与在线模型的性能。结果表明,基于均方根误差(RMSE)和平均绝对误差(MAE),动态贝叶斯树作为在线模型处于批处理模型的中间位置。结果表明,在实际应用中,使用在线模型估算房屋销售价格是合理的。
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