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Hcfrec: Hash Collaborative Filtering Via Normalized Flow With Structural Consensus For Efficient Recommendation

Fan Wang, Weiming Liu, Chaochao Chen, Mengying Zhu, Xiaolin Zheng . Proceedings of the Thirty-First International Joint Conference on Artificial Intelligence 2022 – 2 citations

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Datasets Efficiency Hashing Methods IJCAI Recommender Systems

The ever-increasing data scale of user-item interactions makes it challenging for an effective and efficient recommender system. Recently, hash-based collaborative filtering (Hash-CF) approaches employ efficient Hamming distance of learned binary representations of users and items to accelerate recommendations. However, Hash-CF often faces two challenging problems, i.e., optimization on discrete representations and preserving semantic information in learned representations. To address the above two challenges, we propose HCFRec, a novel Hash-CF approach for effective and efficient recommendations. Specifically, HCFRec not only innovatively introduces normalized flow to learn the optimal hash code by efficiently fit a proposed approximate mixture multivariate normal distribution, a continuous but approximately discrete distribution, but also deploys a cluster consistency preserving mechanism to preserve the semantic structure in representations for more accurate recommendations. Extensive experiments conducted on six real-world datasets demonstrate the superiority of our HCFRec compared to the state-of-art methods in terms of effectiveness and efficiency.

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