VISION-KG:以主题为中心的知识图谱可视化系统

Jiaqi Wei, Shuo Han, Lei Zou
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引用次数: 4

摘要

近年来,大规模知识图谱(KG)受到了学术界和工业界的广泛关注。然而,由于SPARQL语法的复杂性和大量的实际KG,普通用户仍然很难访问KG。在本演示中,我们介绍了VISION-KG,这是一个以主题为中心的可视化系统,可帮助用户通过实体摘要和实体聚类轻松导航KG。给定一个查询实体v0, VISION-KG通过我们提出的衡量重要性、相关性和多样性的事实排序方法,总结v0邻居节点的诱导子图。此外,为了实现简洁性,我们根据实体之间的语义和结构相似性将摘要图划分为几个以主题为中心的摘要子图。我们将演示VISION-KG如何为导航KG提供一个用户友好的可视化界面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VISION-KG: Topic-centric Visualization System for Summarizing Knowledge Graph
Large scale knowledge graph (KG) has attracted wide attentions in both academia and industry recently. However, due to the complexity of SPARQL syntax and massive volume of real KG, it remains difficult for ordinary users to access KG. In this demo, we present VISION-KG, a topic-centric visualization system to help users navigate KG easily via entity summarization and entity clustering. Given a query entity v0, VISION-KG summarizes the induced subgraph of v0's neighbor nodes via our proposed facts ranking method that measures importance, relatedness and diversity. Moreover, to achieve conciseness, we split the summarized graph into several topic-centric summarized subgraph according to semantic and structural similarities among entities. We will demonstrate how VISION-KG provides a user-friendly visualization interface for navigating KG.
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