cs.AI updates on arXiv.org 07月03日
Human Mobility Modeling with Household Coordination Activities under Limited Information via Retrieval-Augmented LLMs
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文章提出一种基于检索增强的大型语言模型框架,通过公共统计数据和社会人口信息生成活动链,优化人类移动模式建模,有效解决现有方法忽视语义关系和活动协调的不足。

arXiv:2409.17495v2 Announce Type: replace Abstract: Understanding human mobility patterns has long been a challenging task in transportation modeling. Due to the difficulties in obtaining high-quality training datasets across diverse locations, conventional activity-based models and learning-based human mobility modeling algorithms are particularly limited by the availability and quality of datasets. Current approaches primarily focus on spatial-temporal patterns while neglecting semantic relationships such as logical connections or dependencies between activities and household coordination activities like joint shopping trips or family meal times, both crucial for realistic mobility modeling. We propose a retrieval-augmented large language model (LLM) framework that generates activity chains with household coordination using only public accessible statistical and socio-demographic information, reducing the need for sophisticated mobility data. The retrieval-augmentation mechanism enables household coordination and maintains statistical consistency across generated patterns, addressing a key gap in existing methods. Our validation with NHTS and SCAG-ABM datasets demonstrates effective mobility synthesis and strong adaptability for regions with limited mobility data availability.

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大型语言模型 人类移动模式 活动协调 移动模式建模 LLM框架
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