Revisiting residential self-selection and travel behavior connection using a double machine learning

Chuan Ding, Yufan Wang, Xinyu (Jason) Cao, Yulin Chen, Yang Jiang, Bin Yu

Research output: Contribution to journalArticlepeer-review

Abstract

Residential self-selection (RSS) confounds the connection between the built environment and travel behavior. Existing studies have used endogenous switching regression models to quantify the proportions of the built environment itself and RSS in the observed behavioral difference between different environments. However, the models are sensitive to model specification and assume pre-defined (mostly linear) relationships among variables. This study applies a double machine learning approach to fill the gap. The empirical context is to jointly model residential choice of Bus Rapid Transit (BRT) neighborhoods and weekly driving distance of household owning cars in Jinan, China. The results showed that the RSS effect accounts for about 40% of the observed difference in driving distance between the households living inside and outside of BRT neighborhoods. This results also emphasizes the necessity of relaxing the linearity assumption in the research on the relationships among the built environment, RSS, and travel behavior.

Original languageEnglish (US)
Article number104089
JournalTransportation Research Part D: Transport and Environment
Volume128
DOIs
StatePublished - Mar 2024

Bibliographical note

Publisher Copyright:
© 2024 Elsevier Ltd

Keywords

  • BRT
  • Machine learning
  • Non-linear
  • Residential self-selection
  • TOD
  • Treatment effects

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