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Jointly Learning Entity and Relation Representations for Entity Alignment

机译:联合学习实体和关系表示以进行实体对齐

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摘要

Entity alignment is a viable means for integrating heterogeneous knowledge among different knowledge graphs (KGs). Recent developments in the field often take an embedding-based approach to model the structural information of KGs so that entity alignment can be easily performed in the embedding space. However, most existing works do not explicitly utilize useful relation representations to assist in entity alignment, which, as we will show in the paper, is a simple yet effective way for improving entity alignment. This paper presents a novel joint learning framework for entity alignment. At the core of our approach is a Graph Convolutional Network (GCN) based framework for learning both entity and relation representations. Rather than relying on pre-aligned relation seeds to learn relation representations, we first approximate them using entity embeddings learned by the GCN. We then incorporate the relation approximation into entities to iteratively learn better representations for both. Experiments performed on three real-world cross-lingual datasets show that our approach substantially outperforms state-of-the-art entity alignment methods.
机译:实体对齐是在不同知识图谱(KG)之间集成异构知识的可行方法。该领域的最新发展经常采用基于嵌入的方法来对KG的结构信息进行建模,以便可以在嵌入空间中轻松地执行实体对齐。但是,大多数现有作品并未明确利用有用的关系表示来帮助实体对齐,正如我们将在本文中展示的那样,这是一种改善实体对齐的简单而有效的方法。本文提出了一种新颖的联合学习框架,用于实体对齐。我们方法的核心是一个基于图卷积网络(GCN)的框架,用于学习实体和关系表示。我们不是依靠预先对齐的关系种子来学习关系表示,而是首先使用GCN学习的实体嵌入对其进行近似。然后,我们将关系近似合并到实体中,以迭代地学习两者的更好表示。在三个现实世界中的跨语言数据集上进行的实验表明,我们的方法大大优于最新的实体对齐方法。

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