cs.AI updates on arXiv.org 09月08日
偏好链:城市交通行为模拟新方法
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本文提出偏好链方法,结合图检索增强生成与LLM,提高城市交通行为模拟的上下文感知性。实验表明,该方法在模拟真实交通方式选择上优于标准LLM,并有望应用于城市移动性建模、个性化出行行为分析和动态交通预测。

arXiv:2508.16172v2 Announce Type: replace Abstract: Understanding human behavior in urban environments is a crucial field within city sciences. However, collecting accurate behavioral data, particularly in newly developed areas, poses significant challenges. Recent advances in generative agents, powered by Large Language Models (LLMs), have shown promise in simulating human behaviors without relying on extensive datasets. Nevertheless, these methods often struggle with generating consistent, context-sensitive, and realistic behavioral outputs. To address these limitations, this paper introduces the Preference Chain, a novel method that integrates Graph Retrieval-Augmented Generation (RAG) with LLMs to enhance context-aware simulation of human behavior in transportation systems. Experiments conducted on the Replica dataset demonstrate that the Preference Chain outperforms standard LLM in aligning with real-world transportation mode choices. The development of the Mobility Agent highlights potential applications of proposed method in urban mobility modeling for emerging cities, personalized travel behavior analysis, and dynamic traffic forecasting. Despite limitations such as slow inference and the risk of hallucination, the method offers a promising framework for simulating complex human behavior in data-scarce environments, where traditional data-driven models struggle due to limited data availability.

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城市交通行为 偏好链 LLM 图检索增强生成 模拟
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