社区真的像我们想象的那么强大吗?

M. A. Alim, Alan Kuhnle, M. Thai
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引用次数: 2

摘要

许多复杂的系统,从万维网和在线社交网络到移动网络,都表现出社区结构,其中节点可以被分组成紧密相连的社区。这种特殊的结构已经被广泛地用于为许多操作和应用设计更好的解决方案,例如无线网络中的路由、蠕虫遏制和社交网络中的兴趣预测。这些解决方案的结果对网络结构很敏感,这就提出了一个重要的问题:在网络中,社区是否容易被打破?为了回答这个问题,我们引入了一个基于密度的问题公式来分析社区的脆弱性。我们的方法包括np完备性和一个O(log k)近似算法,用于解决k为要破坏的群落数的问题。此外,我们还分析了任意社区检测算法下社区的脆弱性。实证结果表明,边缘去除对群落的影响较大,在某些情况下,一小部分边缘的去除会破坏群落结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Are communities as strong as we think?
Many complex systems, from World Wide Web and online social networks to mobile networks, exhibit community structure in which nodes can be grouped into densely interconnected communities. This special structure has been exploited extensively to design better solutions for many operations and applications such as routing in wireless networks, worm containment and interest prediction in social networks. The outcome of these solutions are sensitive to the network structures, which raises an important question: can communities be broken easily in a network? To answer this question, we introduce a density-based problem formulation for analyzing the vulnerability of communities. Our approach includes the NP-completeness and a O(log k) approximation algorithm for solving the problem where k is the number of communities to be broken. Additionally, we analyze the vulnerability of communities in the context of arbitrary community detection algorithms. The empirical results show that communities are vulnerable to edge removal and in some cases the removal of a small fraction of edges can break the community structure.
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