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Zero-Injection Meets Deep Learning: Boosting the Accuracy of Collaborative Filtering in Top-N Recommendation

机译:零注射符合深入学习:提高TOP-N推荐中协同过滤的准确性

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Zero-Injection has been known to be very effective in alleviating the data sparsity problem in collaborative filtering (CF), owing to its idea of finding and exploiting uninteresting items as users' negative preferences. However, this idea has been only applied to the linear CF models such as SVD and SVD + + , where the linear interactions among users and items may have a limitation in fully exploiting the additional negative preferences from uninteresting items. To overcome this limitation, we explore CF based on deep learning models which are highly flexible and thus expected to fully enjoy the benefits from uninteresting items. Empirically, our proposed models equipped with Zero-Injection achieve great improvements of recommendation accuracy under various situations such as basic top-N recommendation, long-tail item recommendation, and recommendation to cold-start users.
机译:已知Zero-Implient在缓解协同过滤(CF)中的数据稀疏问题非常有效,因为它的想法和利用不感兴趣的项目作为用户的负偏好。然而,该想法仅应用于诸如SVD和SVD + +的线性CF型号,其中用户和项目之间的线性交互可能具有完全利用来自不感兴趣的项目的附加负偏好的限制。为了克服这一限制,我们基于深度学习模型探索CF,这是非常灵活的,因此预期充分享受来自无趣的物品的好处。经验,我们的拟议模型配备零注射,在各种情况下,在基本的Top-N推荐,长尾项目推荐等各种情况下,建议准确性的巨大改进,并为冷启动用户推荐。

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