Multi-Relational Graph Convolutional Network Based on Relational Correlation for Link Prediction

Lianhong Ding, Shengchang Gao
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Abstract

Knowledge graphs connect different entities through relationships, Multi-relational knowledge graphs are the common graph form. There are many unexplored potential relationships in multi-relational knowledge graphs. Link prediction is commonly used for knowledge graph completion, The link prediction task can infer possible relationships based on existing entities. Inspired by the advances of graph convolutional networks the link prediction task, we proposed a relational relevance-based GCN framework called RC-CompGCN. Firstly, update the embedding of all low-dimensional relations using the relational correlation module. Secondly, combined embedding entities and relationships using the graph structure module and various entities in knowledge graph embedding techniques are utilized relationship combination operations. We use the relational correlation module and graph convolutional network for link prediction tasks for the first time.
基于关系关联的多关系图卷积网络链接预测
知识图通过关系连接不同的实体,多关系知识图是常见的图形式。在多关系知识图中有许多未被探索的潜在关系。链接预测通常用于知识图谱的补全,链接预测任务可以根据现有实体推断出可能存在的关系。受图卷积网络在链路预测任务上的进展启发,我们提出了一种基于关系关联的GCN框架RC-CompGCN。首先,利用关系关联模块更新所有低维关系的嵌入;其次,利用图结构模块对实体和关系进行组合嵌入,利用知识图嵌入技术中的各种实体进行关系组合操作;我们首次将关联模块和图卷积网络用于链路预测任务。
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