利用RF-XGBoost检测建筑环境与VKT之间的非线性因果关系

IF 6.3 2区 工程技术 Q1 ECONOMICS
Faan Chen , Yilin Zhu , Chuanpu Cao , Xinyi Yang , Xiang Ji , Mingming Lai , Waishan Qiu , Chris P. Nielsen , Jiaorong Wu , Xiaohong Chen
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引用次数: 0

摘要

尽管大量的研究调查了建筑环境和出行行为之间的联系,但很少有因果关系的解释。本研究利用上海的自然实验数据,利用随机森林(RF)和极限梯度提升(XGBoost)的混合机器学习模型,研究了建筑环境与驾驶行为(即车辆行驶公里,VKT)之间的非线性因果关系。实证结果表明,建筑环境对VKT的影响起主导作用,且具有显著的非线性模式,存在有效范围和阈值。研究结果为决策者和规划者提供了可行的见解和支持,以制定复杂的交通干预策略,以减轻对汽车的依赖。总体而言,本研究有效地解决了住宅自我选择问题,同时处理了解释变量之间常见的多重共线性问题,为建筑环境对VKT的影响提供了更准确的因果估计,为政策制定和规划实践提供了细致入微的循证指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Examining nonlinear causal relationship between the built environment and VKT using RF–XGBoost
Although numerous studies examine the association between the built environment and travel behavior, few carry causal explanations. Using the data from a natural experiment in Shanghai, this study examines the nonlinear causal relationship between the built environment and driving behavior (i.e., vehicle kilometers traveled, VKT) using a hybrid machine learning model that integrates Random Forest (RF) and eXtreme Gradient Boosting (XGBoost). Empirical findings show that the built environment dominantly affects VKT, exhibiting a saliently nonlinear pattern with effective range and threshold. The findings equip policymakers and planners with actionable insight and support for formulating sophisticated transportation intervention strategies to mitigate car dependency. Overall, this study effectively addresses the residential self-selection issue while handling the common multicollinearity trouble among the explanatory variables, providing more accurate causal estimates of the built environment's effect on VKT for nuanced evidence-based guidance in policy making and planning practices.
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来源期刊
Transport Policy
Transport Policy Multiple-
CiteScore
12.10
自引率
10.30%
发文量
282
期刊介绍: Transport Policy is an international journal aimed at bridging the gap between theory and practice in transport. Its subject areas reflect the concerns of policymakers in government, industry, voluntary organisations and the public at large, providing independent, original and rigorous analysis to understand how policy decisions have been taken, monitor their effects, and suggest how they may be improved. The journal treats the transport sector comprehensively, and in the context of other sectors including energy, housing, industry and planning. All modes are covered: land, sea and air; road and rail; public and private; motorised and non-motorised; passenger and freight.
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