大规模知识图中不一致解释的快速计算

T. Tran, Mohamed H. Gad-Elrab, D. Stepanova, E. Kharlamov, Jannik Strotgen
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引用次数: 9

摘要

知识图(KGs)是包括Web搜索和问题回答在内的许多应用程序的基本资源。由于kg通常是自动构建的,因此它们可能包含不正确的事实。探测它们是一项至关重要但又极其昂贵的任务。突出的解决方案检测和解释KG中与描述感兴趣的KG域相关的本体的不一致。与机器学习方法相比,它们更可靠,更易于人类解释,但在大型KG上的可扩展性较差。在本文中,我们提出了一种新方法,通过利用捕获突出数据模式的KG抽象来显著加快大型KG中检测和解释不一致的过程。KG抽象虽然小得多,但保留了不一致及其解释。我们对大型kg(例如,DBpedia和Yago)的实验证明了我们的方法的可行性,并表明它明显优于流行的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Computation of Explanations for Inconsistency in Large-Scale Knowledge Graphs
Knowledge graphs (KGs) are essential resources for many applications including Web search and question answering. As KGs are often automatically constructed, they may contain incorrect facts. Detecting them is a crucial, yet extremely expensive task. Prominent solutions detect and explain inconsistency in KGs with respect to accompanying ontologies that describe the KG domain of interest. Compared to machine learning methods they are more reliable and human-interpretable but scale poorly on large KGs. In this paper, we present a novel approach to dramatically speed up the process of detecting and explaining inconsistency in large KGs by exploiting KG abstractions that capture prominent data patterns. Though much smaller, KG abstractions preserve inconsistency and their explanations. Our experiments with large KGs (e.g., DBpedia and Yago) demonstrate the feasibility of our approach and show that it significantly outperforms the popular baseline.
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