Machine learning for inference: using gradient boosting decision tree to assess non-linear effects of bus rapid transit on house prices

IF 2.7 Q1 GEOGRAPHY
Linchuan Yang, Yuan Liang, Qing Zhu, Xiaoling Chu
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引用次数: 14

Abstract

ABSTRACT The adoption of bus rapid transit (BRT) systems has gained worldwide popularity over the past several decades. China is no exception as it has long been aiming at promoting public transportation. Prior studies have provided extensive evidence that BRT has substantial effects on house prices with traditional econometric techniques, such as hedonic pricing models. However, few of those investigations have discussed the non-linear relationship between BRT and house prices. Using the Xiamen data, this study employs a machine learning technique, namely the gradient boosting decision tree (GBDT), to scrutinize the non-linear relationship between BRT and house prices. This study documents a positive association between accessibility to BRT stations and house prices and a negative association between proximity to the BRT corridor and house prices. Moreover, it suggests a non-linear relationship between BRT and house prices and indicates that GBDT has more substantial predictive power than hedonic pricing models.
用于推理的机器学习:使用梯度增强决策树评估快速公交对房价的非线性影响
在过去的几十年里,快速公交系统(BRT)在全球范围内得到了广泛的应用。中国也不例外,因为它一直致力于促进公共交通。先前的研究已经提供了大量的证据,证明BRT对房价有实质性的影响,使用传统的计量经济学技术,如享乐定价模型。然而,这些调查中很少讨论BRT与房价之间的非线性关系。利用厦门的数据,本研究采用了一种机器学习技术,即梯度提升决策树(GBDT),来审视BRT与房价之间的非线性关系。本研究证明了BRT站点的可达性与房价之间存在正相关关系,而BRT走廊的邻近性与房价之间存在负相关关系。此外,BRT与房价之间存在非线性关系,表明GBDT比享乐定价模型具有更强的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Annals of GIS
Annals of GIS Multiple-
CiteScore
8.30
自引率
2.00%
发文量
31
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