Bayesian spatiotemporal modeling of passenger trip assignment in metro networks
Xiaoxu Chen, Alexandra M. Schmidt, Zhenliang Ma, Lijun Sun

TL;DR
This paper introduces a Bayesian hierarchical model for inferring passenger trip paths and dynamic network costs in metro systems using AFC data, accounting for spatiotemporal variability and uncertainty.
Contribution
The paper presents a novel Bayesian approach combining tensor factorization and Gaussian processes to jointly estimate trip components and passenger preferences from limited data.
Findings
Effective recovery of model parameters in simulations
Superior estimation accuracy on real Hong Kong data
Revealed significant spatiotemporal passenger behavior variations
Abstract
Assigning passenger trips to specific network paths using automatic fare collection (AFC) data is a fundamental application in urban transit analysis. The task is a difficult inverse problem: the only available information consists of each passenger's total travel time and their origin and destination, while individual passenger path choices and dynamic network costs are unobservable, and behavior varies significantly across space and time. We propose a novel Bayesian hierarchical model to resolve this problem by jointly estimating dynamic network costs and passenger path choices while quantifying their uncertainty. Our model decomposes trip travel time into four components -- access, in-vehicle, transfer, and egress -- each modeled as a time-varying random walk. To capture heterogeneous passenger behavior, we introduce a multinomial logit model with spatiotemporally varying…
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