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Mining Attribute-structure Correlated Patterns in Large Attributed Graphs

机译:大型属性图中挖掘属性-结构相关模式

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In this work, we study the correlation between attribute sets and the occurrence of dense subgraphs in large attributed graphs, a task we call structural correlation pattern mining. A structural correlation pattern is a dense subgraph induced by a particular attribute set. Existing methods are not able to extract relevant knowledge regarding how vertex attributes interact with dense subgraphs. Structural correlation pattern mining combines aspects of frequent itemset and quasi-clique mining problems. We propose statistical significance measures that compare the structural correlation of attribute sets against their expected values using null models. Moreover, we evaluate the interestingness of structural correlation patterns in terms of size and density. An efficient algorithm that combines search and pruning strategies in the identification of the most relevant structural correlation patterns is presented. We apply our method for the analysis of three real-world attributed graphs: a collaboration, a music, and a citation network, verifying that it provides valuable knowledge in a feasible time.
机译:在这项工作中,我们研究属性集与大属性图中密集子图的出现之间的相关性,我们将其称为结构相关性模式挖掘。结构相关性模式是由特定属性集引起的密集子图。现有方法无法提取有关顶点属性如何与密集子图交互的相关知识。结构相关模式挖掘结合了频繁项集和准气候挖掘问题的各个方面。我们提出了统计显着性度量,用于比较使用空模型的属性集与其预期值的结构相关性。此外,我们根据大小和密度评估结构相关性模式的有趣性。提出了一种结合搜索和修剪策略来识别最相关的结构相关模式的有效算法。我们将我们的方法用于分析三个真实属性图:协作,音乐和引用网络,以验证它在可行的时间内提供了有价值的知识。

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