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Joint Knowledge Graph and User Preference for Explainable Recommendation

机译:联合知识图和用户偏好用于可解释的推荐

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Collaborative Filtering is recognized as an effective recommendation method, but it suffers from sparsity and cold start problems. To this end, this paper uses knowledge graph as a kind of auxiliary information to make more accurate recommendations, and fully considers the heterogeneity of entities and relations. A Joint Knowledge graph and user Preference model JKP is proposed, which combines user preferences and knowledge graph effectively for explainable recommendation. The model uses Multi-Layer Perceptron for knowledge graph embedding representations and item recommendation, and the task of knowledge graph embedding representation acts as a role to assist in recommendation tasks. At the same time, the model takes into account the preferences of the user while selecting the item. As for the different user preferences, the model adopts a soft mechanism to represent the user preference while interacting. The train process of JKP uses a joint method, in which the vector representation of the entity and the collaborative representation of the item in the recommendation algorithm can influence each other. The proposed model is validated on public dataset from real-world, and the results show the improvements not only in CTR tasks but also Top-N recommendations.
机译:协作过滤被认为是一种有效的推荐方法,但它受到稀疏性和冷启动问题的影响。为此,本文使用知识图形作为一种辅助信息,以便更准确的建议,并充分考虑实体和关系的异质性。提出了一个联合知识图和用户偏好模型JKP,其将用户偏好和知识图形有效地结合起来,以便可解释的推荐。该模型使用多层的Perceptron进行知识图形嵌入表示和项目推荐,并且知识图形嵌入表示的任务作为协助推荐任务的作用。同时,该模型考虑了选择项目时用户的偏好。至于不同的用户偏好,模型采用软机制来表示用户偏好。 JKP的列车过程使用联合方法,其中实体的矢量表示和推荐算法中项目的协作表示可以彼此影响。所提出的模型在现实世界的公共数据集上验证,结果不仅在CTR任务中的改进,而且还显示了TOP-N的推荐。

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