We introduce a novel embedding model, named NoKE, which aims to integrate co-occurrence among entities and relations into graph neural networks to improve knowledge graph completion (i.e., link prediction). Given a knowledge graph, NoKE constructs a single graph considering entities and relations as individual nodes. NoKE then computes weights for edges among nodes based on the co-occurrence of entities and relations. Next, NoKE utilizes vanilla GNNs to update vector representations for entity and relation nodes and then adopts a score function to produce the triple scores. Comprehensive experimental results show that our NoKE obtains state-of-the-art results on three new, challenging, and difficult benchmark datasets CoDEx for knowledge graph completion, demonstrating the power of its simplicity and effectiveness.
翻译:我们引入了一个名为NoKE的新嵌入模型,该模型旨在将各实体和关系之间的共同存在和关系整合到图形神经网络中,以提高知识图形的完成程度(即链接预测 ) 。 根据一个知识图表,诺克E构建了一个单一的图表,将实体和关系视为个体节点。诺克E随后根据实体和关系的共同存在和关系计算节点之间节点边缘的权重。接着,诺克E利用范尼拉 GNNs更新实体和关系节点的矢量表达方式,然后通过一个得分函数来产生三分。全面实验结果显示,我们的诺克E在三个新的、富有挑战性的和困难的基准数据集CODEx上获得了最新的结果,以完成知识图形的完成,显示了其简单性和有效性。