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Automated assessment of knowledge hierarchy evolution: comparing directed acyclic graphs

机译:知识层次进化的自动评估:比较指示的无循环图

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Automated construction of knowledge hierarchies from huge data corpora is gaining increasing attention in recent years, in order to tackle the infeasibility of manually extracting and semantically linking millions of concepts. As a knowledge hierarchy evolves with these automated techniques, there is a need for measures to assess its temporal evolution, quantifying the similarities between different versions and identifying the relative growth of different subgraphs in the knowledge hierarchy. In this paper, we focus on measures that leverage structural properties of the knowledge hierarchy graph to assess the temporal changes. We propose a principled and scalable similarity measure, based on Katz similarity between concept nodes, for comparing different versions of a knowledge hierarchy, modeled as a generic directed acyclic graph. We present theoretical analysis to depict that the proposed measure accurately captures the salient properties of taxonomic hierarchies, assesses changes in the ordering of nodes, along with the logical subsumption of relationships among concepts. We also present a linear time variant of the measure, and show that our measures, unlike previous approaches, are tunable to cater to diverse application needs. We further show that our measure provides interpretability, thereby identifying the key structural and logical difference in the hierarchies. Experiments on a real DBpedia and biological knowledge hierarchy showcase that our measures accurately capture structural similarity, while providing enhanced scalability and tunability. Also, we demonstrate that the temporal evolution of different subgraphs in this knowledge hierarchy, as captured purely by our structural measure, corresponds well with the known disruptions in the related subject areas.
机译:近年来,巨大数据集团的知识层次结构的自动建设正在增加越来越关注,以解决手动提取和语义链接数百万概念的不可行性。作为知识层次的发展,需要采取这些自动化技术,需要措施来评估其时间演进,量化不同版本之间的相似性并识别知识层次结构中不同子图的相对生长。在本文中,我们专注于利用知识层次结构图的结构特性来评估时间变化的措施。我们提出了基于概念节点之间的KATZ相似性的原则和可扩展的相似度测量,用于比较知识层次结构的不同版本,以通用定向的非循环图为模拟。我们提出了理论分析,描绘了所提出的措施,准确地捕获分类学层次结构的突出特性,评估节点排序的变化,以及概念之间的关系的逻辑上限。我们还呈现了措施的线性时间变量,并表明我们的措施与以前的方法不同,可调整以满足不同的应用需求。我们进一步表明,我们的措施提供了解释性,从而识别层次结构中的关键结构和逻辑差异。真正的DBPedia和生物知识等级展示的实验,我们的措施准确地捕获了结构性相似性,同时提供了增强的可扩展性和可调性。此外,我们表明,这种知识等级中的不同子图的时间演变,如纯粹通过我们的结构措施捕获,与相关对象区域中的已知中断相吻合。

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