图集成中持久和判别社区的挖掘

Steve Harenberg, Mandar S. Chaudhary, N. Samatova
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引用次数: 0

摘要

检测单个图中的所有社区是图数据分析中的一项普遍任务。然而,许多科学应用程序自然地将数据创建为图形的集合。例如,图形集成可以从多个方面创建:不同时间点的社会网络,由独立实验创建的生物网络,以及由独特气候模型创建的全球气候网络。在这项工作中,我们提出了一种在图集合中枚举社区子集的方法,该方法具有检测持久和判别子社区的能力。此外,我们支持由用户指定的感兴趣的顶点和任意集成切片组成的查询,以生成与用户更相关的输出,同时减少输出大小和计算时间。虽然相关方法是围绕单个社区定义设计的,但我们的方法是围绕这样的思想设计的,即选择适当的社区定义通常取决于手头的应用程序。因此,我们的目标是提供一个框架,可以在发现持久和判别子结构时利用丰富的社区检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Persistent and Discriminative Communities in Graph Ensembles
Detecting all communities in a single graph is a prevalent task in graph data analytics. However, many scientific applications naturally create data as an ensemble of graphs. For example, graph ensembles can be created from multiple: social networks at distinct points in time, biological networks created from independent experiments, and global climate networks created from unique climate models. In this work, we present a method for enumerating community subsets across an ensemble of graphs, with the ability to detect both persistent and discriminative subcommunities. Moreover, we support queries, consisting of user-specified vertices of interest and arbitrary ensemble slices, to produce output that is more relevant to the user while reducing output size and computation time. While related methods are designed around a single community definition, our method is designed around the idea that choosing an appropriate community definition often depends on the application at hand. Therefore, our goal is to provide a framework that can leverage the abundance of community detection methods available when discovering persistent and discriminative substructures.
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