Relationship between built environment characteristics of TOD and subway ridership: A causal inference and regression analysis of the Beijing subway

Jingru Huang , Shaokuan Chen , Qi Xu , Yue Chen , Jiajun Hu
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引用次数: 9

Abstract

Numerous studies suggest that built environments have impacts on transit ridership, but few consider the causal connection between them. The goal of this study is to examine the causal relationship between the built environment and subway ridership and then to re-examine the impacts. In the case of the Beijing subway system, we use the Bayesian Network learning approach to examine the causal relationship between built environment characteristics and ridership. Based on the causality analysis, we further explore the impact of the built environment on subway ridership using Ordinary Least Squares and Geographically Weighted Regression models. Findings reveal the causal impact of employment density and public transport accessibility on alighting ridership during the morning peak. The result of the correlation analysis between the morning-peak alighting ridership and other variables shows that higher employment density and public transport accessibility produce more travel demand. The regression model also indicates that the effects of the built environment on ridership vary across space. Last but not least, the results of the model performance tests show that the model constructed from the indicators obtained from the causality screening is reliable.

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TOD建成环境特征与地铁客流量的关系——基于北京地铁的因果推理与回归分析
许多研究表明,建筑环境对公交客流量有影响,但很少有人考虑到它们之间的因果关系。本研究的目的是检视建筑环境与地铁客流量之间的因果关系,并重新检视其影响。以北京地铁系统为例,我们使用贝叶斯网络学习方法来检验建筑环境特征与客流量之间的因果关系。在因果关系分析的基础上,利用普通最小二乘法和地理加权回归模型进一步探讨了建成环境对地铁客流量的影响。研究结果揭示了就业密度和公共交通可达性对早高峰下车客流量的因果影响。早高峰下车客流量与其他变量的相关分析结果表明,较高的就业密度和公共交通可达性会产生更多的出行需求。回归模型还表明,建筑环境对客流量的影响因空间而异。最后,模型性能检验的结果表明,从因果关系筛选得到的指标构建的模型是可靠的。
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来源期刊
CiteScore
7.10
自引率
8.10%
发文量
41
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