秘密网络成员如何隐藏其领导人的身份

Marcin Waniek, Tomasz P. Michalak, M. Wooldridge, Talal Rahwan
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引用次数: 3

摘要

中心性测量是最常用的社会网络分析工具,用于识别隐蔽组织的领导人。虽然文献主要集中在研究现有中心性措施的有效性或开发新的中心性措施,但我们从相反的角度研究这个问题,通过关注一组领导者如何避免被中心性措施识别为隐蔽网络的关键成员。更具体地说,我们根据三个基本的中心性度量,即度,亲密度和中间度,分析了选择一组边缘添加到网络中以降低领导者排名的问题。我们证明了这个问题对于每个测度都是np完全的。此外,我们研究领导者如何从零开始构建一个网络,专门设计使他们不受中心性测量的影响。我们确定了一种网络结构,它不仅保证了领导者在一定程度上的隐藏,而且允许他们在网络中传播他们的影响力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How Members of Covert Networks Conceal the Identities of Their Leaders
Centrality measures are the most commonly advocated social network analysis tools for identifying leaders of covert organizations. While the literature has predominantly focused on studying the effectiveness of existing centrality measures or developing new ones, we study the problem from the opposite perspective, by focusing on how a group of leaders can avoid being identified by centrality measures as key members of a covert network. More specifically, we analyze the problem of choosing a set of edges to be added to a network to decrease the leaders’ ranking according to three fundamental centrality measures, namely, degree, closeness, and betweenness. We prove that this problem is NP-complete for each measure. Moreover, we study how the leaders can construct a network from scratch, designed specifically to keep them hidden from centrality measures. We identify a network structure that not only guarantees to hide the leaders to a certain extent but also allows them to spread their influence across the network.
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