Machine learning-based causal inference for evaluating intervention in travel behaviour research: A difference-in-differences framework

Meng Zhou, Sixian Huang, Wei Tu*, Donggen Wang

*Corresponding author for this work

Research output: Contribution to journalJournal articlepeer-review

Abstract

Causal inference with the difference-in-differences (DID) framework is popular in identifying causal effects with observational data and has started to be applied in recent travel behaviour studies. Most relevant transportation research adopts the conventional linear parametric DID model, which is known to be inflexible and restrictive. This study applies non-parametric DID estimators facilitated by machine learning (ML) models for causal inference in a variety of data scenarios. Semi-parametric and doubly robust estimators are established and integrated with the ML-based cross-fitting pipeline. Simulation studies and empirical case studies are conducted to showcase the ability of ML-based DID to detect causal effects from both simulated and real-world datasets. Results suggest that the proposed methods outperform conventional DID models in all data scenarios. Light working models are generally preferred over hyperparameter-dependent ones for their comparable performance, lower computational burden, and higher levels of compatibility to real-world empirical analysis. Empirical case studies also demonstrate how the proposed DID method could be applied to evaluate the impacts of various interventions on travel behaviour in different contexts. The present study adds to the existing travel behaviour literature by leveraging machine learning algorithms and non-parametric estimators to the impact evaluation of external interventions on travel characteristics and expanding the application of causal inference approaches in transportation research.

Original languageEnglish
Article number100852
Number of pages16
JournalTravel Behaviour and Society
Volume37
Early online date8 Jul 2024
DOIs
Publication statusE-pub ahead of print - 8 Jul 2024

Scopus Subject Areas

  • Geography, Planning and Development
  • Transportation

User-Defined Keywords

  • Causal inference
  • Difference-in-differences
  • Doubly robust estimation
  • Machine learning
  • Travel behaviour
  • Treatment effects

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