Recommendation Algorithm for Graph Convolutional Networks based on Multi-Ralational Knowledge Graph

Yunhao Li, Shijie Chen, Jiancheng Zhao
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引用次数: 0

Abstract

Classic recommendation technologies such as collaborative filtering have some challenging problems such as cold start. Because knowledge graph can enrich data information, in recent years, many scholars have applied it to recommendation systems to solve the above problems. However, Most of the methods only exploit relations and entities involved in the knowledge graph, and do not further explore the correlation information between the entities in the knowledge graph. In order to solve the above problems, recommendation algorithm for graph convolutional networks based on multi-relational knowledge graph (Multi-RKGCN) is proposed, which expands the relations and entities in knowledge graph through reflexive and self-circulating ways. At the time of aggregation, the tail entity and the corresponding relationship are combined and embedded by the knowledge graph embedding technology to enrich the semantics of the entity. Finally, the performance of AUC and F1 is verified on two publicly available datasets. The experimental results show that Multi-RKGCN method is better than KGCN method.
基于多关系知识图的图卷积网络推荐算法
协同过滤等经典推荐技术存在冷启动等具有挑战性的问题。由于知识图可以丰富数据信息,近年来,许多学者将其应用到推荐系统中来解决上述问题。然而,大多数方法只挖掘知识图中涉及的关系和实体,而没有进一步挖掘知识图中实体之间的关联信息。为了解决上述问题,提出了基于多关系知识图的图卷积网络推荐算法(Multi-RKGCN),该算法通过自反和自循环的方式扩展知识图中的关系和实体。在聚合时,利用知识图嵌入技术对尾部实体及其对应关系进行组合和嵌入,丰富实体的语义。最后,在两个公开可用的数据集上验证了AUC和F1的性能。实验结果表明,Multi-RKGCN方法优于KGCN方法。
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