针对项目推荐的社区感知图嵌入式学习

Pengyi Hao, Zhaojie Qian, Shuang Wang, Cong Bai
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引用次数: 0

摘要

由于大量真实世界数据的异质性,元路径被广泛应用于推荐中。这类推荐方法可以表示实体之间的复合关系,但无法探索节点之间的可靠关系和元路径之间的影响。为了解决这个问题,我们提出了一种用于项目推荐的社区感知图嵌入学习方法(CAEIRec)。通过自适应地为实体图中的节点构建社群,从社群结构的角度将节点的相关性嵌入到图学习中。在嵌入过程中,用户和项目的语义信息被共同学习。最后,将用户和项目的嵌入信息输入到扩展矩阵因式分解中,以获得顶级推荐。我们在两个不同的公共数据集上进行了一系列综合实验。实证结果表明,与最先进的方法相比,CAEIRec 是一种令人鼓舞的推荐方法。CAEIRec 的源代码见 https://github.com/a545187002/CAEIRec-tensorflow。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Community aware graph embedding learning for item recommendation

Community aware graph embedding learning for item recommendation

Due to the heterogeneity of a large amount of real-world data, meta-paths are widely used in recommendation. Such recommendation methods can represent composite relationships between entities, but cannot explore reliable relations between nodes and influence among meta-paths. For solving this problem, a Community Aware Graph Embedding Learning method for Item Recommendation(CAEIRec) is proposed. By adaptively constructing communities for nodes in the graph of entities, the correlations of nodes are embedded in graph learning from the aspect of community structure. Semantic information of users and items are jointly learnt in the embedding. Finally, the embeddings of users and items are fed to extend matrix factorization for getting the top recommendations. A series of comprehensive experiments are conducted on two different public datasets. The empirical results show that CAEIRec is an encouraging recommendation method by the comarison with the state-of-the-art methods. Source code of CAEIRec is available at https://github.com/a545187002/CAEIRec-tensorflow.

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