Efficient Semantic Summary Graphs for Querying Large Knowledge Graphs

E. Niazmand, Gezim Sejdiu, D. Graux, Maria-Esther Vidal
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引用次数: 1

Abstract

Knowledge Graphs (KGs) integrate heterogeneous data, but one challenge is the development of efficient tools for allowing end users to extract useful insights from these sources of knowledge. In such a context, reducing the size of a Resource Description Framework (RDF) graph while preserving all information can speed up query engines by limiting data shuffle, especially in a distributed setting. This paper presents two algorithms for RDF graph summarization: Grouping Based Summarization (GBS) and Query Based Summarization (QBS). The latter is an optimized and lossless approach for the former method. We empirically study the effectiveness of the proposed lossless RDF graph summarization to retrieve complete data, by rewriting an RDF Query Language called SPARQL query with fewer triple patterns using a semantic similarity. We conduct our experimental study in instances of four datasets with different sizes. Compared with the state-of-the-art query engine Sparklify executed over the original RDF graphs as a baseline, QBS query execution time is reduced by up to 80% and the summarized RDF graph is decreased by up to 99%.
用于查询大型知识图的高效语义摘要图
知识图(Knowledge Graphs, KGs)集成了异构数据,但其中一个挑战是开发有效的工具,使最终用户能够从这些知识来源中提取有用的见解。在这种情况下,减少资源描述框架(Resource Description Framework, RDF)图的大小,同时保留所有信息,可以通过限制数据混乱来加快查询引擎的速度,尤其是在分布式设置中。本文提出了两种RDF图的摘要算法:基于分组的摘要(GBS)和基于查询的摘要(QBS)。后者是前一种方法的优化和无损方法。我们通过使用语义相似性重写RDF查询语言SPARQL查询,使用更少的三重模式,对所提出的无损RDF图摘要检索完整数据的有效性进行了实证研究。我们在四个不同大小的数据集实例中进行实验研究。与在原始RDF图上作为基线执行的最先进的查询引擎Sparklify相比,QBS查询执行时间最多减少了80%,汇总的RDF图最多减少了99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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