cs.AI updates on arXiv.org 09月30日
基于多模态时空特征嵌入的POI推荐模型
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本文提出一种基于多模态时空特征嵌入的POI推荐模型,融合长期偏好信息和关键时空上下文信息,通过时空特征处理、多模态嵌入和自注意力聚合等方法,提高POI推荐精度。

arXiv:2509.22661v1 Announce Type: cross Abstract: The next Point-of-interest (POI) recommendation is mainly based on sequential traffic information to predict the user's next boarding point location. This is a highly regarded and widely applied research task in the field of intelligent transportation, and there have been many research results to date. Traditional POI prediction models primarily rely on short-term traffic sequence information, often neglecting both long-term and short-term preference data, as well as crucial spatiotemporal context features in user behavior. To address this issue, this paper introduces user long-term preference information and key spatiotemporal context information, and proposes a POI recommendation model based on multimodal spatiotemporal context feature embedding. The model extracts long-term preference features and key spatiotemporal context features from traffic data through modules such as spatiotemporal feature processing, multimodal embedding, and self-attention aggregation. It then uses a weighted fusion method to dynamically adjust the weights of long-term and short-term features based on users' historical behavior patterns and the current context. Finally, the fused features are matched using attention, and the probability of each location candidate becoming the next location is calculated. This paper conducts experimental verification on multiple transportation datasets, and the results show that the POI prediction model combining multiple types of features has higher prediction accuracy than existing SOTA models and methods.

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POI推荐 多模态时空特征 智能交通 推荐系统
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