SEED:一个用于大规模知识图谱中实体探索和调试的系统

Jun Chen, Yueguo Chen, Xiaoyong Du, Xiangling Zhang, Xuan Zhou
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引用次数: 9

摘要

大规模知识图包含大量的实体和丰富的实体之间的关系。通过KGs进行数据探索,用户可以浏览实体的属性以及实体之间的关系。在本文中,我们介绍了一个名为SEED的系统,该系统旨在支持大规模KGs中面向实体的探索,该系统基于检索一些种子实体的相似实体以及它们之间的语义关系,这些关系表明实体之间是如何相似的。SEED中实体探索的一个副产品是方便用户发现KGs的不足之处,这样用户在探索KGs时就可以很容易地修复发现的bug。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SEED: A system for entity exploration and debugging in large-scale knowledge graphs
Large-scale knowledge graphs (KGs) contain massive entities and abundant relations among the entities. Data exploration over KGs allows users to browse the attributes of entities as well as the relations among entities. It therefore provides a good way of learning the structure and coverage of KGs. In this paper, we introduce a system called SEED that is designed to support entity-oriented exploration in large-scale KGs, based on retrieving similar entities of some seed entities as well as their semantic relations that show how entities are similar to each other. A by-product of entity exploration in SEED is to facilitate discovering the deficiency of KGs, so that the detected bugs can be easily fixed by users as they explore the KGs.
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