Attentive Meta-graph Embedding for item Recommendation in heterogeneous information networks
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摘要
Heterogeneous information network (HIN) has become increasingly popular to be exploited in recommender systems, since it contains abundant semantic information to help generate better recommendations. Most conventional work employs meta-paths to model the rich semantics in the HIN. However, the meta-path as a linear structure is insufficient to express the connections. Recently, several work adopts a graph structure, i.e. meta-graph, to express the complex semantics. However, they treat the contributions of nodes in the meta-graph equally, and no explicit representations for users, items or meta-graph based context are learned in the process. To tackle the above problems, this paper proposes an Attentive Meta-graph Embedding approach for item Recommendation, called AMERec, in HINs. Firstly, we prioritize those highly similar pairwise features in the selection of meta-graph instances. Secondly, we differentiate each node in the meta-graph and learn an embedding for each meta-graph. Thirdly, we consider the differences between user and item pairs based on their meta-graph context, and learn a weight for each meta-graph by leveraging the attention mechanism. Finally, we predict the rating by capturing the low- and high-dimensional interaction information between users, items and their meta-graph based context. Comprehensive experiments on three different datasets show that the proposed method is superior to other comparative methods.
论文关键词:Recommender system,Attention mechanism,Embedding,Neural network,Heterogeneous information network
论文评审过程:Received 19 February 2020, Revised 13 August 2020, Accepted 12 October 2020, Available online 21 October 2020, Version of Record 2 November 2020.
论文官网地址:https://doi.org/10.1016/j.knosys.2020.106524