论文标题
TransEdge:翻译关系图形的关系图形嵌入
TransEdge: Translating Relation-contextualized Embeddings for Knowledge Graphs
论文作者
论文摘要
近年来,学习知识图(KG)嵌入引起了人们的关注。文献中的大多数嵌入模型将关系解释为线性或双线性映射功能,以在实体嵌入中操作。但是,我们发现这种关系级建模无法很好地捕获KG的各种关系结构。在本文中,我们提出了一种新颖的以边缘为中心的嵌入模型TransEdge,该模型将关系表示与特定的头尾实体对有关。我们将关系的上下文化表示为边缘嵌入,并将其解释为实体嵌入之间的翻译。 TransEdge在不同的预测任务上实现了有希望的表现。我们在基准数据集上进行的实验表明,它在基于嵌入的实体对准方面获得了最先进的结果。我们还表明,TransEdge与常规实体一致性方法互补。此外,它在链接预测上显示出非常具竞争力的表现。
Learning knowledge graph (KG) embeddings has received increasing attention in recent years. Most embedding models in literature interpret relations as linear or bilinear mapping functions to operate on entity embeddings. However, we find that such relation-level modeling cannot capture the diverse relational structures of KGs well. In this paper, we propose a novel edge-centric embedding model TransEdge, which contextualizes relation representations in terms of specific head-tail entity pairs. We refer to such contextualized representations of a relation as edge embeddings and interpret them as translations between entity embeddings. TransEdge achieves promising performance on different prediction tasks. Our experiments on benchmark datasets indicate that it obtains the state-of-the-art results on embedding-based entity alignment. We also show that TransEdge is complementary with conventional entity alignment methods. Moreover, it shows very competitive performance on link prediction.