We present an effective graph neural network (GNN)-based knowledge graph embedding model, which we name WGE, to capture entity- and relation-focused graph structures. Given a knowledge graph, WGE builds a single undirected entity-focused graph that views entities as nodes. WGE also constructs another single undirected graph from relation-focused constraints, which views entities and relations as nodes. WGE then proposes a GNN-based architecture to better learn vector representations of entities and relations from these two single entity- and relation-focused graphs. WGE feeds the learned entity and relation representations into a weighted score function to return the triple scores for knowledge graph completion. Experimental results show that WGE outperforms strong baselines on seven benchmark datasets for knowledge graph completion.
翻译:我们提出了一个有效的基于图形神经网络(GNN)的知识嵌入模型,我们将其命名为WGE,以捕捉以实体和关系为重点的图表结构。根据一个知识图表,WGE建立了一个单一的、以实体为重点的、以实体为节点的、以实体为焦点的、以实体为焦点的、以关系为焦点的图表。WGE还根据以关系为焦点的制约,构建了另一个单一的、以实体和关系为焦点的、以关系为焦点的图表。WGE随后提出了一个基于GNE的架构,以更好地学习各实体的矢量表达方式和与这两个单一实体和以关系为焦点的图表的关系。WGEG将所学的实体和关系表达方式纳入一个加权分数函数,以返回完成知识图表的三分数。实验结果表明,WGEGE在完成知识图表的七个基准数据集上超过了强有力的基线。</s>