Causal structure learning for travel mode choice using structural restrictions and model averaging algorithm.

Tai-Yu Ma, Joseph Y.J. Chow, Jia Xu

Research output: Contribution to journalArticlepeer-review

Abstract

This work contributes to develop a new methodology to identify empirical data-driven causal structure of a domain knowledge. We propose an algorithm as a two-stage procedure by first drawing relevant prior partial relationships between variables and using them as structure constraints in a structure learning task of Bayesian Networks. The latter is then based on a model averaging approach to obtain a statistically sound Bayesian network. The empirical study focuses on modeling commuters' travel mode choice. We present experimental results on testing the design of prior restrictions, the effect of resampling size and learning algorithms, and the effect of random draw on fitted BN structure. The results show that the proposed method can capture more sophisticated relationships between the variables that are missing in both decision tree models and random utility models.
Original languageEnglish
Pages (from-to)299-325
JournalTransportmetrica A: Transport Science
Volume13
Issue number4
Early online date25 Nov 2016
DOIs
Publication statusPublished - 2017

Keywords

  • Bayesian networks
  • causal structure
  • structure learning algorithm
  • travel mode choice

Cite this