A comprehensive survey of entity alignment for knowledge graphs

Kaisheng Zeng , Chengjiang Li , Lei Hou , Juanzi Li , Ling Feng
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引用次数: 57

Abstract

Knowledge Graphs (KGs), as a structured human knowledge, manage data in an ease-of-store, recognizable, and understandable way for machines and provide a rich knowledge base for different artificial intelligence applications. However, current multi-source KGs have heterogeneity and complementarity, and it is necessary to fuse heterogeneous knowledge from different data sources or different languages into a unified and consistent KG. Entity alignment aims to find equivalence relations between entities in different knowledge graphs but semantically represent the same real-world object, which is the most fundamental and essential technology in knowledge fusion. This paper investigated almost all the latest knowledge graph representations learning and entity alignment methods and summarized their core technologies and features from different aspects. Our full investigation gives a comprehensive outlook on several promising research directions for future work. We also provide an efficient and efficiency entity alignment toolkit to help researchers quickly start their own entity alignment models.

知识图谱实体对齐的综合调查
知识图(Knowledge Graphs, KGs)作为一种结构化的人类知识,以易于存储、可识别和可理解的方式对数据进行管理,为不同的人工智能应用提供了丰富的知识库。然而,当前的多源知识库存在异质性和互补性,需要将来自不同数据源或不同语言的异构知识融合为统一一致的知识库。实体对齐旨在寻找不同知识图中实体之间的等价关系,但在语义上表示相同的现实世界对象,是知识融合中最基本、最关键的技术。本文研究了几乎所有最新的知识图表示学习和实体对齐方法,并从不同方面总结了它们的核心技术和特点。我们的全面调查对未来工作的几个有前途的研究方向进行了全面的展望。我们还提供了一个高效的实体对齐工具包,以帮助研究人员快速启动他们自己的实体对齐模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
45.00
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