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Knowledge-Aware Graph Collaborative Filtering for Recommender Systems

机译:推荐系统的知识感知图协同过滤

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To solve the data sparseness and cold start problems in collaborative filtering (CF) based recommender systems (RS), various complex algorithms are proposed to extract and integrate explicit or implicit information of data for the recommendation. In this paper, we propose to aggregate and transmit the rich semantic information with the help of knowledge graph (KG) that is regarded as one of the main sources of auxiliary information. Specifically, we first propose a Neural Graph Collaborative Filtering to construct and aggregate information. And then we build a scalable and end-to-end knowledge-aware graph collaborative filtering model named KGCF. In KGCF, neighbourhood information in KG is encoded to construct information in a complex new way. And the information from neighbours are merged with a personalized bias calculated by attention mechanism based on KG. In order to extend the interacted items and capture the high-level semantic information of KG, multiple KGCF layers stacked is used in KGCF. Experimental results on three real data sets indicate that the KGCF model proposed in this paper is superior to the existing models in terms of accuracy and can also effectively solve the data sparsity problem of RS.
机译:为了解决基于协作过滤(CF)的推荐器系统(RS)中的数据稀疏和冷启动问题,提出了各种复杂算法来提取和集成用于推荐的数据的显式或隐式信息。在本文中,我们建议借助被视为辅助信息的主要来源之一的知识图谱(KG)来聚合和传输丰富的语义信息。具体来说,我们首先提出一种神经图协同过滤来构造和汇总信息。然后,我们建立了一个可扩展的,端到端的知识感知图协作过滤模型KGCF。在KGCF中,KG中的邻域信息经过编码,以一种复杂的新方式构造信息。并且来自邻居的信息与通过基于KG的注意力机制计算的个性化偏差合并。为了扩展交互项并捕获KG的高级语义信息,在KGCF中使用了堆叠的多个KGCF层。在三个真实数据集上的实验结果表明,本文提出的KGCF模型在准确性上优于现有模型,还可以有效解决RS的数据稀疏性问题。

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