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Structural Vulnerability Analysis of Overlapping Communities in Complex Networks

机译:复杂网络中重叠社区的结构漏洞分析

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Many complex networks commonly exhibit community structure in their underlying organizations, i.e., They contain multiple groups of nodes having more connections inside a group and less interactions among groups. This special structure not only offers key insights into understanding the network organization principles but also plays a vital role in maintaining the normal function of the whole system. As a result, any significant change to the network communities, due to element-wise failures, can potentially redefine their organizational structures and consequently lead to the malfunction or undesirable corruption of the entire system. Therefore, identifying network elements that are essential to its community structure is a fundamental and important problem. However, to the best of our knowledge, this research direction has not received much been attention in the literature. In this paper, we study the structural vulnerability of overlapping complex network communities to identify nodes that are important in maintaining the complex structure organization. Specifically, given a network and a budget of k nodes, we want to identify k critical nodes whose their exclusions transforms the current network community structure. To effectively analyze this vulnerability on overlapping communities, we propose the concept of generating edges and provide an optimal algorithm for detecting the Minimal Generating Edge Set (MGES) in a network community. We suggest genEdge, an effective solution based on this MGES. Empirical results on both synthesized networks with known community structures, and real data including Reality cellular data, Foursquare and Facebook social traces confirm the efficacy of our approach.
机译:许多复杂的网络通常在其基础组织中表现出社区结构,即,它们包含多组节点,这些节点在组内具有更多的连接,而组间的交互较少。这种特殊的结构不仅提供了对了解网络组织原理的重要见解,而且在维护整个系统的正常功能方面也起着至关重要的作用。结果,由于元素方面的故障而对网络社区进行的任何重大更改都可能潜在地重新定义其组织结构,并因此导致整个系统的故障或不期望的损坏。因此,确定对其社区结构必不可少的网络元素是一个基本而重要的问题。然而,就我们所知,该研究方向在文献中并未受到太多关注。在本文中,我们研究了重叠的复杂网络社区的结构脆弱性,以确定对维护复杂结构组织至关重要的节点。具体来说,给定一个网络和k个节点的预算,我们要确定k个关键节点,这些节点的排除会改变当前的网络社区结构。为了有效地分析重叠社区上的此漏洞,我们提出了生成边缘的概念,并提供了一种用于检测网络社区中的最小生成边缘集(MGES)的最佳算法。我们建议genEdge,这是基于此MGES的有效解决方案。在具有已知社区结构的综合网络以及包括Reality细胞数据,Foursquare和Facebook社会痕迹在内的真实数据上的经验结果证实了我们方法的有效性。

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