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Progress and Challenges on Entity Alignment of Geographic Knowledge Bases

机译:地理知识库实体对齐的进展与挑战

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Geographic knowledge bases (GKBs) with multiple sources and forms are of obvious heterogeneity, which hinders the integration of geographic knowledge. Entity alignment provides an effective way to find correspondences of entities by measuring the multidimensional similarity between entities from different GKBs, thereby overcoming the semantic gap. Thus, many efforts have been made in this field. This paper initially proposes basic definitions and a general framework for the entity alignment of GKBs. Specifically, the state-of-the-art of algorithms of entity alignment of GKBs is reviewed from the three aspects of similarity metrics, similarity combination, and alignment judgement; the evaluation procedure of alignment results is also summarized. On this basis, eight challenges for future studies are identified. There is a lack of methods to assess the qualities of GKBs. The alignment process should be improved by determining the best composition of heterogeneous features, optimizing alignment algorithms, and incorporating background knowledge. Furthermore, a unified infrastructure, techniques for aligning large-scale GKBs, and deep learning-based alignment techniques should be developed. Meanwhile, the generation of benchmark datasets for the entity alignment of GKBs and the applications of this field need to be investigated. The progress of this field will be accelerated by addressing these challenges.
机译:具有多种来源和形式的地理知识库(GKB)具有明显的异质性,这阻碍了地理知识的整合。实体对齐通过测量来自不同GKB的实体之间的多维相似性,从而提供了一种有效的方法来查找实体的对应关系,从而克服了语义鸿沟。因此,在该领域已经做出了许多努力。本文首先提出了GKB实体对齐的基本定义和通用框架。具体而言,从相似性度量,相似性组合和对齐判断三个方面综述了GKB的实体对齐算法的最新技术。总结了比对结果的评价程序。在此基础上,确定了未来研究的八个挑战。缺乏评估GKB质量的方法。应该通过确定异构特征的最佳组成,优化对齐算法并结合背景知识来改善对齐过程。此外,应该开发统一的基础结构,用于对齐大型GKB的技术以及基于深度学习的对齐技术。同时,需要研究用于GKB实体对齐的基准数据集的生成和该领域的应用。应对这些挑战将加快该领域的进展。

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