BIKAGCN: Knowledge-Aware Recommendations Under Bi-layer Graph Convolutional Networks

被引:0
作者
Guoshu Li
Li Yang
Sichang Bai
Xinyu Song
Yijun Ren
Shanqiang Liu
机构
[1] Southwest Petroleum University,School of Computer Science and Software Engineering
来源
Neural Processing Letters | / 56卷
关键词
Knowledge graph; Recommender systems; Graph convolutional network; Collaborative filtering;
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学科分类号
摘要
Recommender systems are a popular solution for the problem of information overload, offering personalized recommendations to users. Recent years, research has aimed to enhance recommender systems by employing knowledge graphs in conjunction with Graph convolutional network (GCN) to extract user and item features. Although GCN possess a great potential, they are still far from reaching their full capability in recommender systems. This paper introduces a novel approach—knowledge-aware recommendations under bi-layer graph convolutional networks (BIKAGCN) that combines attention and bi-layer GCNs to improve performance. The first layer of the BIKAGCN model trains embedding representations of users and items based on user-item interaction graphs. The second layer introduces a novel knowledge-aware layer of attention and graph convolutional network (KAGCN) layer that leverages both the first layer’s user-item embeddings and item knowledge graph embeddings. Experimental results on three publicly available datasets (MovieLens-20M, Last-FM, and Book-Crossing) demonstrate that BIKAGCN leads to significant performance improvements in recall@20 metric (14.41%, 8.86%, and 20.90%, respectively) compared to currently available state-of-the-art approaches. Moreover, the model maintains satisfactory performance in cold-start cases.The research provides some guidance for the direction of subsequent research on recommender systems.
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