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Two-Stage Entity Alignment: Combining Hybrid Knowledge Graph Embedding with Similarity-Based Relation Alignment

机译:两阶段实体对齐:将混合知识图与基于相似性的关系对齐组合

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Entity alignment aims to automatically determine whether an entity pair in different knowledge graphs refers to the same entity in reality. Existing entity alignment methods can be classified into two categories: string-similarity-bascd methods and embedding-based methods. String-similarity-based methods have higher accuracy, however, they might have difficulty in dealing with literal heterogeneity, i.e., an entity pair in diverse forms. Though embedding-based entity alignment can deal with literal heterogeneity, they also suffer the shortcomings of higher time complexity and lower accuracy. Moreover, there remain limitations and challenges due to only using the structure information of triples for existing embedding methods. Therefore, in this study, we propose a two-stage entity alignment framework, which can combine the advantages of both methods. In addition, to enhance the embedding performance, a hybrid knowledge graph embedding model with both fact triples and logical rules is introduced for entity alignment. Experimental results on two real-world datasets show that the proposed method is significantly better than the state-of-the-art embedding-based entity alignment methods.
机译:实体对齐旨在自动确定不同知识图中的实体对是否是指现实中的同一实体。现有实体对齐方法可以分为两类:字符串相似性 - Bascd方法和基于嵌入的方法。基于字符串相似性的方法具有更高的准确性,然而,它们可能难以处理文字异质性,即以不同形式的实体对。虽然基于嵌入的实体对准可以处理文字异质性,但它们也遭受更高时间复杂性和更低的准确性的缺点。此外,由于仅使用用于现有嵌入方法的三元组的结构信息,因此存在局限性和挑战。因此,在本研究中,我们提出了一种两级实体对准框架,可以结合两种方法的优点。此外,为了增强嵌入性能,为实体对齐引入了具有事实三元组和逻辑规则的混合知识图形嵌入模型。两个真实数据集上的实验结果表明,该方法明显优于最先进的基于嵌入的实体对准方法。

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