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SQBC: An efficient subgraph matching method over large and dense graphs

机译:SQBC:有效的大图和密集图子图匹配方法

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摘要

Recent progress in biology and computer science have generated many complicated networks, most of which can be modeled as large and dense graphs. Developing effective and efficient subgraph match methods over these graphs is urgent, meaningful and necessary. Although some excellent exploratory approaches have been proposed these years, they show poor performances when the graphs are large and dense. This paper presents a novel Subgraph Query technique Based on Clique feature, called SQBC, which integrates the carefully designed clique encoding with the existing vertex encoding [40] as the basic index unit to reduce the search space. Furthermore, SQBC optimizes the subgraph isomorphism test based on clique features. Extensive experiments over biological networks, RDF dataset and synthetic graphs have shown that SQBC outperforms the most popular competitors both in effectiveness and efficiency especially when the data graphs are large and dense.
机译:生物学和计算机科学的最新进展已经产生了许多复杂的网络,其中大部分可以建模为大型且密集的图形。在这些图上开发有效且高效的子图匹配方法是紧迫,有意义和必要的。尽管这些年来已经提出了一些出色的探索性方法,但是当图形较大且密集时,它们的性能较差。本文提出了一种新的基于团簇特征的子图查询技术,称为SQBC,它将精心设计的团簇编码与现有的顶点编码[40]集成为基本索引单元,以减少搜索空间。此外,SQBC基于派系特征优化了子图同构测试。在生物网络,RDF数据集和合成图上进行的大量实验表明,SQBC在有效性和效率上都优于最受欢迎的竞争对手,尤其是当数据图较大且密集时。

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