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An efficiently computable subgraph pattern support measure: counting independent observations

机译:一种可有效计算的子图模式支持措施:计算独立观察值

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Graph support measures are functions measuring how frequently a given subgraph pattern occurs in a given database graph. An important class of support measures relies on overlap graphs. A major advantage of overlap-graph based approaches is that they combine anti-monotonicity with counting the occurrences of a subgraph pattern which are independent according to certain criteria. However, existing overlap-graph based support measures are expensive to compute. In this paper, we propose a new support measure which is based on a new notion of independence. We show that our measure is the solution to a sparse linear program, which can be computed efficiently using interior point methods. We study the anti-monotonicity and other properties of this new measure, and relate it to the statistical power of a sample of embeddings in a network. We show experimentally that, in contrast to earlier overlap-graph based proposals, our support measure makes it feasible to mine subgraph patterns in large networks.
机译:图支持措施是一种功能,用于测量给定的子图模式在给定的数据库图中出现的频率。一类重要的支持措施依赖于重叠图。基于重叠图的方法的主要优点是,它们结合了反单调性和对根据某些标准独立的子图模式的出现进行计数。但是,现有的基于重叠图的支持措施的计算成本很高。在本文中,我们提出了一种基于新的独立性概念的新支持措施。我们证明了我们的测度是稀疏线性程序的解决方案,可以使用内点方法有效地计算该程序。我们研究了此新度量的反单调性和其他属性,并将其与网络中嵌入样本的统计功效相关联。我们通过实验表明,与早期基于重叠图的建议相比,我们的支持措施使在大型网络中挖掘子图模式变得可行。

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