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arxiv: 1905.13127 · v1 · pith:FMCJ4SH5new · submitted 2019-05-19 · 💻 cs.IR · cs.LG· stat.ML

Topic-Enhanced Memory Networks for Personalised Point-of-Interest Recommendation

classification 💻 cs.IR cs.LGstat.ML
keywords recommendationmodelmemoryuserattentiondeepextensivelatent
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Point-of-Interest (POI) recommender systems play a vital role in people's lives by recommending unexplored POIs to users and have drawn extensive attention from both academia and industry. Despite their value, however, they still suffer from the challenges of capturing complicated user preferences and fine-grained user-POI relationship for spatio-temporal sensitive POI recommendation. Existing recommendation algorithms, including both shallow and deep approaches, usually embed the visiting records of a user into a single latent vector to model user preferences: this has limited power of representation and interpretability. In this paper, we propose a novel topic-enhanced memory network (TEMN), a deep architecture to integrate the topic model and memory network capitalising on the strengths of both the global structure of latent patterns and local neighbourhood-based features in a nonlinear fashion. We further incorporate a geographical module to exploit user-specific spatial preference and POI-specific spatial influence to enhance recommendations. The proposed unified hybrid model is widely applicable to various POI recommendation scenarios. Extensive experiments on real-world WeChat datasets demonstrate its effectiveness (improvement ratio of 3.25% and 29.95% for context-aware and sequential recommendation, respectively). Also, qualitative analysis of the attention weights and topic modeling provides insight into the model's recommendation process and results.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Collaborative Metric Learning with Memory Network for Multi-Relational Recommender Systems

    cs.LG 2019-06 unverdicted novelty 5.0

    MRMN is a unified neural framework using collaborative metric learning and memory networks to model fine-grained relations from multiple user feedback types and outperform prior recommender systems.