复杂网络中的高效反社团检测

Sebastian Lackner, Andreas Spitz, M. Weidemüller, Michael Gertz
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引用次数: 1

摘要

将复杂系统的组成部分之间的关系建模为顶点和边缘的网络,是许多科学学科中常用的一种方法,有助于更深入地了解系统本身。特别是,这些网络中密集连接社区的检测经常用于识别功能相关的组件,例如个人关系网络中的社交圈或生物网络中代理之间的相互作用。传统上,社区被认为具有高密度的内部连接,而不同社区之间的外部边缘密度较低。然而,并非复杂网络中所有自然存在的群落都具有这种结构等效的概念,例如光谱线跃迁网络中具有共享量子数的能量态群。在本文中,我们专注于检测以异常低密度的内部连接和高密度的外部连接为特征的反社区的反向任务。虽然文献中已经讨论了反社区的轶事应用或作为传统社区检测的修改,但没有对该问题的算法进行严格的调查。为此,我们介绍并讨论了一系列可能的方法,并在一系列现实世界和合成网络上评估了它们的效率和有效性。此外,我们还表明,社区和反社区结构的存在并不相互排斥,即使具有强大传统社区结构的网络也可能包含反社区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient anti-community detection in complex networks
Modeling the relations between the components of complex systems as networks of vertices and edges is a commonly used method in many scientific disciplines that serves to obtain a deeper understanding of the systems themselves. In particular, the detection of densely connected communities in these networks is frequently used to identify functionally related components, such as social circles in networks of personal relations or interactions between agents in biological networks. Traditionally, communities are considered to have a high density of internal connections, combined with a low density of external edges between different communities. However, not all naturally occurring communities in complex networks are characterized by this notion of structural equivalence, such as groups of energy states with shared quantum numbers in networks of spectral line transitions. In this paper, we focus on this inverse task of detecting anti-communities that are characterized by an exceptionally low density of internal connections and a high density of external connections. While anti-communities have been discussed in the literature for anecdotal applications or as a modification of traditional community detection, no rigorous investigation of algorithms for the problem has been presented. To this end, we introduce and discuss a broad range of possible approaches and evaluate them with regard to efficiency and effectiveness on a range of real-world and synthetic networks. Furthermore, we show that the presence of a community and anti-community structure are not mutually exclusive, and that even networks with a strong traditional community structure may also contain anti-communities.
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