从网络集合中挖掘不稳定社区

Ahsanur Rahman, Steve T. K. Jan, Hyunju Kim, B. Prakash, T. Murali
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引用次数: 1

摘要

图的集成出现在一些自然应用中,如移动跟踪、计算生物学、社交网络和流行病学。许多现有挖掘技术解决的一个常见问题是识别这些集成中感兴趣的子图。相反,在本文中,我们提出快速发现图的最大可变区域,即在集成中产生非常不同子图的节点集。我们首先开发了这种节点集的两个直观和新颖的定义,然后我们展示了可以使用分层算法有效地枚举它们。最后,通过对多个真实数据集的广泛实验,我们展示了这些数据集如何捕获给定网络集的主要结构变化,并为我们提供了关于这些数据集的有趣和相关的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Unstable Communities from Network Ensembles
Ensembles of graphs arise in several natural applications, such as mobility tracking, computational biology, socialnetworks, and epidemiology. A common problem addressed by many existing mining techniques is to identify subgraphs of interest in these ensembles. In contrast, in this paper, we propose to quickly discover maximally variable regions of the graphs, i.e., sets of nodes that induce very different subgraphs across the ensemble. We first develop two intuitive and novel definitions of such node sets, which we then show can be efficiently enumerated using a level-wise algorithm. Finally, using extensive experiments on multiple real datasets, we show how these sets capture the main structural variations of the given set of networks and also provide us with interesting and relevant insights about these datasets.
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