2022
DOI: 10.48550/arxiv.2202.13140
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Consensus Learning from Heterogeneous Objectives for One-Class Collaborative Filtering

Abstract: Over the past decades, for One-Class Collaborative Filtering (OCCF), many learning objectives have been researched based on a variety of underlying probabilistic models. From our analysis, we observe that models trained with different OCCF objectives capture distinct aspects of user-item relationships, which in turn produces complementary recommendations. This paper proposes a novel OCCF framework, named as ConCF, that exploits the complementarity from heterogeneous objectives throughout the training process, … Show more

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References 42 publications
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