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HyperMAN: Hypergraph-enhanced Meta-learning Adaptive Network for Next POI Recommendation

27 March 2025
Jinze Wang
Tiehua Zhang
Lu Zhang
Yang Bai
Xuzhao Li
Jiong Jin
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Abstract

Next Point-of-Interest (POI) recommendation aims to predict users' next locations by leveraging historical check-in sequences. Although existing methods have shown promising results, they often struggle to capture complex high-order relationships and effectively adapt to diverse user behaviors, particularly when addressing the cold-start issue. To address these challenges, we propose Hypergraph-enhanced Meta-learning Adaptive Network (HyperMAN), a novel framework that integrates heterogeneous hypergraph modeling with a difficulty-aware meta-learning mechanism for next POI recommendation. Specifically, three types of heterogeneous hyperedges are designed to capture high-order relationships: user visit behaviors at specific times (Temporal behavioral hyperedge), spatial correlations among POIs (spatial functional hyperedge), and user long-term preferences (user preference hyperedge). Furthermore, a diversity-aware meta-learning mechanism is introduced to dynamically adjust learning strategies, considering users behavioral diversity. Extensive experiments on real-world datasets demonstrate that HyperMAN achieves superior performance, effectively addressing cold start challenges and significantly enhancing recommendation accuracy.

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@article{wang2025_2503.22049,
  title={ HyperMAN: Hypergraph-enhanced Meta-learning Adaptive Network for Next POI Recommendation },
  author={ Jinze Wang and Tiehua Zhang and Lu Zhang and Yang Bai and Xin Li and Jiong Jin },
  journal={arXiv preprint arXiv:2503.22049},
  year={ 2025 }
}
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