推荐系统的层次知识和兴趣传播网络

Qinghong Chen, Huobin Tan, Guangyan Lin, Ze Wang
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引用次数: 4

摘要

为了解决协同过滤的数据稀疏性和冷启动问题,在推荐系统中引入了社会网络、知识图谱等侧信息。知识图谱作为一种辅助的、结构性的数据,是世界实体之间充满语义和逻辑联系的数据。本文提出了一种用于推荐的层次知识和兴趣传播网络(HKIPN),其中提出了一种新的异构传播方法。具体来说,HKIPN以用户-项目二部交互图和知识图相结合的统一图同时传播知识和用户兴趣。在传播过程中,设计了一种分层方法,显式地并发地聚合节点的高阶邻居。此外,采用注意机制来区分邻居的重要性。此外,由于信息在传播过程中会衰减,因此考虑了衰减因子作为组成最终用户-物品表示的每个层次表示的权重。我们将提出的模型应用于关于电影、书籍和音乐推荐的三个基准数据集,并将其与最先进的基线进行比较。实验结果和进一步的研究表明,我们的方法优于引人注目的推荐基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hierarchical Knowledge and Interest Propagation Network for Recommender Systems
To address the data sparsity and cold start issues of collaborative filtering, side information, such as social network, knowledge graph, is introduced to recommender systems. Knowledge graph, as a sort of auxiliary and structural data, is full of semantic and logical connections among entities in the world. In this paper, we propose a Hierarchical Knowledge and Interest Propagation Network(HKIPN) for recommendation, where a new heterogeneous propagation method is presented. Specifically, HKIPN propagates knowledge and user interest simultaneously in a unified graph combined by user-item bipartite interaction graph and knowledge graph. During the propagation, a hierarchical method is devised to aggregate a node's high-order neighbors explicitly and concurrently. Besides, an attention mechanism is employed to discriminate the importance of neighbors. Furthermore, due to information decay in the process of propagation, the decay factor, as the weight of each hierarchical representation to compose the final user-and-item representations, is taken into account. We apply the proposed model to three benchmark datasets about movie, book, and music recommendation and compare it with state-of-the-art baselines. The experiment results and further studies demonstrate that our approach outperforms compelling recommender baselines.
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