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A Hybrid Collaborative Recommendation System Based On Matrix Factorization And Deep Neural Network

机译:基于矩阵分解和深神经网络的混合协作推荐系统

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The paper explores a modified recommender system that is established based on the combination of matrix factorization and deep neural network that work on the implicit feedbacks of users and also auxiliary information of both users and items. Recent works show the effectiveness of deep neural network on recommendation systems. Proposed models aim at discovering additional relationships by using auxiliary information to explore the internal relationship between users and also the relationships of items among themselves. Experiments show 0.5556 and 0.8036 in NDCG and HR with the model which is an improvement compared to other popular collaborative filtering methods.
机译:本文探讨了一种修改的推荐系统,该系统是基于矩阵分解和深神经网络的组合来建立的,这些系统是对用户的隐含反馈以及用户和项目的辅助信息。最近的作品展示了深度神经网络对推荐系统的有效性。建议的模型旨在通过使用辅助信息来发现额外的关系,探索用户之间的内部关系以及它们之间的项目之间的关系。实验在NDCG和HR中显示0.5556和0.8036,与其他与其他流行的协作过滤方法相比的改进。

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