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Autores principales: Wu, Minghui, Yin, Yafeng, Lynch, Jerome P., Liu, Zhichen
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2605.02806
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author Wu, Minghui
Yin, Yafeng
Lynch, Jerome P.
Liu, Zhichen
author_facet Wu, Minghui
Yin, Yafeng
Lynch, Jerome P.
Liu, Zhichen
contents Day-to-day traffic dynamics are widely used to model flow evolution due to travelers' learning and adjustment behavior, yet empirical analysis of these models often relies on descriptive calibration with limited inferential content. This paper develops a statistical inference framework for day-to-day route choice dynamics based on a stochastic individual-level adjustment model. The framework enables uncertainty quantification and formal inference for behavioral parameters from trajectory data. We establish identifiability and consistency under mild conditions, and extend the framework to accommodate demand variation, user heterogeneity through a hierarchical structure, and anonymized observability caused by privacy constraints on trajectory data. Simulation studies demonstrate good finite-sample performance, calibrated uncertainty, and robustness to model misspecification. Empirical analyses of controlled laboratory experiments and real-world trajectory data from Ann Arbor, Michigan, show that the framework can generate novel behavioral insights across settings: it reveals the inadequacy of a purely inter-day learning model once en-route information is introduced, recovers systematic behavioral differences across participant types, and uncovers meaningful day-to-day learning together with substantial demand variation in real-world commuting behavior.
format Preprint
id arxiv_https___arxiv_org_abs_2605_02806
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Statistical Inference of Day-to-Day Traffic Dynamics
Wu, Minghui
Yin, Yafeng
Lynch, Jerome P.
Liu, Zhichen
Optimization and Control
Statistics Theory
Day-to-day traffic dynamics are widely used to model flow evolution due to travelers' learning and adjustment behavior, yet empirical analysis of these models often relies on descriptive calibration with limited inferential content. This paper develops a statistical inference framework for day-to-day route choice dynamics based on a stochastic individual-level adjustment model. The framework enables uncertainty quantification and formal inference for behavioral parameters from trajectory data. We establish identifiability and consistency under mild conditions, and extend the framework to accommodate demand variation, user heterogeneity through a hierarchical structure, and anonymized observability caused by privacy constraints on trajectory data. Simulation studies demonstrate good finite-sample performance, calibrated uncertainty, and robustness to model misspecification. Empirical analyses of controlled laboratory experiments and real-world trajectory data from Ann Arbor, Michigan, show that the framework can generate novel behavioral insights across settings: it reveals the inadequacy of a purely inter-day learning model once en-route information is introduced, recovers systematic behavioral differences across participant types, and uncovers meaningful day-to-day learning together with substantial demand variation in real-world commuting behavior.
title Statistical Inference of Day-to-Day Traffic Dynamics
topic Optimization and Control
Statistics Theory
url https://arxiv.org/abs/2605.02806