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CoupledCF: Learning Explicit and Implicit User-item Couplings in Recommendation for Deep Collaborative Filtering

机译:COMPECEDCF:在深度协同过滤的建议书中学习显式和隐式用户项目耦合

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Non-IID recommender system discloses the nature of recommendation and has shown its potential in improving recommendation quality and addressing issues such as sparsity and cold start. It leverages existing work that usually treats users/items as independent while ignoring the rich couplings within and between users and items, leading to limited performance improvement. In reality, users/items are related with various couplings existing within and between users and items, which may better explain how and why a user has personalized preference on an item. This work builds on non-IID learning to propose a neural user-item coupling learning for collaborative filtering, called CoupledCF. CoupledCF jointly learns explicit and implicit couplings within/between users and items w.r.t. user/item attributes and deep features for deep CF recommendation. Empirical results on two real-world large datasets show that CoupledCF significantly outperforms two latest neural recommenders: neural matrix factorization and Google's Wide & Deep network.
机译:非IID推荐制度披露了推荐的本质,并展示了提高建议质量和解决稀疏性和冷启动等问题的潜力。它利用现有的工作通常将用户/物品视为独立的,同时忽略用户和物品之间的丰富耦合,导致性能改进有限。实际上,用户/项目与用户和项目内部和项目之间的各种耦合有关,这可能更好地解释用户在项目上具有个性化偏好的方式和原因。这项工作构建了非IID学习,提出了一种用于协作滤波的神经用户项目耦合学习,称为耦合CF。 ConcexedCF共同学习用户和项目之间的显式和隐式耦合W.R.T.用户/项目属性和深度CF推荐的深度功能。两个现实世界大型数据集的经验结果表明,耦合频率显着优于两个最新的神经推荐人:神经矩阵分组和谷歌的广泛网络。

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