Entity alignment aims to identify equivalent entity pairs from different Knowledge Graphs (KGs), which is essential in integrating multi-source KGs. Recently, with the introduction of GNNs into entity alignment, the architectures of recent models have become more and more complicated. We even find two counter-intuitive phenomena within these methods: (1) The standard linear transformation in GNNs is not working well. (2) Many advanced KG embedding models designed for link prediction task perform poorly in entity alignment. In this paper, we abstract existing entity alignment methods into a unified framework, Shape-Builder & Alignment, which not only successfully explains the above phenomena but also derives two key criteria for an ideal transformation operation. Furthermore, we propose a novel GNNs-based method, Relational Reflection Entity Alignment (RREA). RREA leverages Relational Reflection Transformation to obtain relation specific embeddings for each entity in a more efficient way. The experimental results on real-world datasets show that our model significantly outperforms the state-of-the-art methods, exceeding by 5.8%-10.9% on Hits@1.
翻译:实体对齐的目的是确定不同知识图(KGs)中对应的对应实体,这是整合多源KGs的关键。最近,随着GNNs进入实体对齐,最近模型的结构变得越来越复杂。我们甚至发现这两种方法中存在两种反直觉现象:(1) GNS的标准线性转变效果不佳。(2) 许多为连接预测任务设计的高级KG嵌入模型在实体对齐方面表现不佳。在本文中,我们将现有的实体对齐方法抽象化成一个统一框架,即Shape-Buider & Conness,这不仅成功地解释了上述现象,而且还为理想转型作业提出了两个关键标准。此外,我们提出了一个新的基于GNNs的方法,即“关系反射实体对齐”。REA利用关系反射转换,以更高效的方式为每个实体获得具体的关系嵌入。真实世界数据集的实验结果显示,我们的模型大大超越了最新方法,在赫茨@1上超过5.8%-10.9 %。