2024
DOI: 10.3389/fnbot.2024.1428785
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Multi-granularity contrastive learning model for next POI recommendation

Yunfeng Zhu,
Shuchun Yao,
Xun Sun

Abstract: Next Point-of-Interest (POI) recommendation aims to predict the next POI for users from their historical activities. Existing methods typically rely on location-level POI check-in trajectories to explore user sequential transition patterns, which suffer from the severe check-in data sparsity issue. However, taking into account region-level and category-level POI sequences can help address this issue. Moreover, collaborative information between different granularities of POI sequences is not well utilized, whic… Show more

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