AI-Driven Day-to-Day Route Choice
Leizhen Wang, Peibo Duan, Zhengbing He, Cheng Lyu, Xin Chen, Nan Zheng, Li Yao, Zhenliang Ma

TL;DR
This paper explores using Large Language Models to simulate human-like route choice behavior in transportation, introducing an LLM-based agent that learns from experience and offers explanations, showing promise for policy analysis.
Contribution
It introduces LLMTraveler, an innovative LLM-powered agent that models adaptive route choice behavior with memory and personality traits, advancing transportation decision-making tools.
Findings
LLMTraveler replicates human route-switching patterns aligning with lab data.
The model performs comparably to MNL and RL in multi-OD scenarios.
It provides natural language explanations for decisions.
Abstract
Understanding travelers' route choices can help policymakers devise optimal operational and planning strategies for both normal and abnormal circumstances. However, existing choice modeling methods often rely on predefined assumptions and struggle to capture the dynamic and adaptive nature of travel behavior. Recently, Large Language Models (LLMs) have emerged as a promising alternative, demonstrating remarkable ability to replicate human-like behaviors across various fields. Despite this potential, their capacity to accurately simulate human route choice behavior in transportation contexts remains doubtful. To satisfy this curiosity, this paper investigates the potential of LLMs for route choice modeling by introducing an LLM-empowered agent, "LLMTraveler." This agent integrates an LLM as its core, equipped with a memory system that learns from past experiences and makes decisions by…
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Code & Models
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Transportation Planning and Optimization · Transportation and Mobility Innovations
MethodsEmirates Airlines Office in Dubai · ALIGN
