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Auteurs principaux: Chen, Xiaoxu, Schmidt, Alexandra M., Ma, Zhenliang, Sun, Lijun
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2507.22403
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author Chen, Xiaoxu
Schmidt, Alexandra M.
Ma, Zhenliang
Sun, Lijun
author_facet Chen, Xiaoxu
Schmidt, Alexandra M.
Ma, Zhenliang
Sun, Lijun
contents 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 coefficients. We manage the high dimensionality of these coefficients using kernelized tensor factorization with Gaussian process priors to effectively model complex spatiotemporal correlations. We develop a tailored and efficient Markov chain Monte Carlo (MCMC) algorithm for model inference. A simulation study demonstrates the method's effectiveness in recovering the underlying model parameters. On a large-scale dataset from the Hong Kong Mass Transit Railway, our framework demonstrates superior estimation accuracy over established benchmarks. The results reveal significant spatiotemporal variations in passenger preferences and provide robust uncertainty quantification, offering transit operators a powerful tool for enhancing service planning and operational management.
format Preprint
id arxiv_https___arxiv_org_abs_2507_22403
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Bayesian spatiotemporal modeling of passenger trip assignment in metro networks
Chen, Xiaoxu
Schmidt, Alexandra M.
Ma, Zhenliang
Sun, Lijun
Applications
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 coefficients. We manage the high dimensionality of these coefficients using kernelized tensor factorization with Gaussian process priors to effectively model complex spatiotemporal correlations. We develop a tailored and efficient Markov chain Monte Carlo (MCMC) algorithm for model inference. A simulation study demonstrates the method's effectiveness in recovering the underlying model parameters. On a large-scale dataset from the Hong Kong Mass Transit Railway, our framework demonstrates superior estimation accuracy over established benchmarks. The results reveal significant spatiotemporal variations in passenger preferences and provide robust uncertainty quantification, offering transit operators a powerful tool for enhancing service planning and operational management.
title Bayesian spatiotemporal modeling of passenger trip assignment in metro networks
topic Applications
url https://arxiv.org/abs/2507.22403