Entity alignment (EA) is to discover entities referring to the same object in the real world from different knowledge graphs (KGs). It plays an important role in automatically integrating KGs from multiple sources. Existing knowledge graph embedding (KGE) methods based on Graph Neural Networks (GNNs) have achieved promising results, which enhance entity representation with relation information unidirectionally. Besides, more and more methods introduce semi-supervision to ask for more labeled training data. However, two challenges still exist in these methods: (1) Insufficient interaction: The interaction between entities and relations is insufficiently utilized. (2) Low-quality bootstrapping: The generated semi-supervised data is of low quality. In this paper, we propose a novel framework, Echo Entity Alignment (EchoEA), which leverages self-attention mechanism to spread entity information to relations and echo back to entities. The relation representation is dynamically computed from entity representation. Symmetrically, the next entity representation is dynamically calculated from relation representation, which shows sufficient interaction. Furthermore, we propose attribute-combined bi-directional global-filtered strategy (ABGS) to improve bootstrapping, reduce false samples and generate high-quality training data. The experimental results on three real-world cross-lingual datasets are stable at around 96\% at hits@1 on average, showing that our approach not only significantly outperforms the state-of-the-art methods, but also is universal and transferable for existing KGE methods.
翻译:实体对齐(EA) 是指从不同的知识图表(KGs)中发现真实世界中指向同一目标的实体。 它在自动整合来自多种来源的KGs方面发挥着重要作用。 基于图形神经网络(GNNS)的现有知识图形嵌入(KGE)方法已经取得了可喜的成果,这提高了实体在关联信息方面的代表性。 此外,越来越多的方法采用半监督观点来要求更多的标签培训数据。 但是,这些方法中仍然存在两个挑战:(1) 互动不足:实体和关系之间的互动没有得到充分的利用。 (2) 低质量靴式:生成的半监督的半监督数据质量很低。在本文件中,我们提出了一个新的框架,即“Echo实体对齐”(KGEE),它利用自我保护机制将实体信息传播到关联信息,并与实体反馈回回回。 关系代表制是动态地从实体代表制中计算出下一个实体代表制的动态计算方法,它只是从关系代表制中动态地计算出足够的互动。(2) 低质量: 生成半监督的半监督性数据质量数据质量战略(ABGS) 以大幅改进96 的实验性模型显示我们的全球数据。