Mobility-LLM: Learning Visiting Intentions and Travel Preferences from Human Mobility Data with Large Language Models
Location-based services (LBS) have accumulated extensive human mobility data on diverse behaviors through check-in sequences. These sequences offer valuable insights into users' intentions and preferences. Yet, existing models analyzing check-in sequences fail to consider the semantics containe...
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Zusammenfassung: | Location-based services (LBS) have accumulated extensive human mobility data
on diverse behaviors through check-in sequences. These sequences offer valuable
insights into users' intentions and preferences. Yet, existing models analyzing
check-in sequences fail to consider the semantics contained in these sequences,
which closely reflect human visiting intentions and travel preferences, leading
to an incomplete comprehension. Drawing inspiration from the exceptional
semantic understanding and contextual information processing capabilities of
large language models (LLMs) across various domains, we present Mobility-LLM, a
novel framework that leverages LLMs to analyze check-in sequences for multiple
tasks. Since LLMs cannot directly interpret check-ins, we reprogram these
sequences to help LLMs comprehensively understand the semantics of human
visiting intentions and travel preferences. Specifically, we introduce a
visiting intention memory network (VIMN) to capture the visiting intentions at
each record, along with a shared pool of human travel preference prompts (HTPP)
to guide the LLM in understanding users' travel preferences. These components
enhance the model's ability to extract and leverage semantic information from
human mobility data effectively. Extensive experiments on four benchmark
datasets and three downstream tasks demonstrate that our approach significantly
outperforms existing models, underscoring the effectiveness of Mobility-LLM in
advancing our understanding of human mobility data within LBS contexts. |
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DOI: | 10.48550/arxiv.2411.00823 |