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Measuring Topological Robustness of Networks under Sustained Targeted Attacks

机译:在持续的目标攻击下测量网络的拓扑稳健性

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In this paper, we introduce a measure to analyse the structural robustness of complex networks, which is specifically applicable in scenarios of targeted, sustained attacks. The measure is based on the changing size of the largest component as the network goes through disintegration. We argue that the measure can be used to quantify and compare the effectiveness of various attack strategies. Applying this measure, we confirm the result that scale-free networks are comparatively less vulnerable to random attacks and more vulnerable to targeted attacks. Then we analyse the robustness of a range of real world networks, and show that most real world networks are least robust to attacks based on betweenness of nodes. We also show that the robustness of some networks are more sensitive to the attack strategy compared to others, and given the disparity in the computational complexities of calculating various centrality measures, the robustness coefficient introduced can play a key role in choosing the attack and defence strategies for real world networks. While the measure is applicable to all types of complex networks, we clearly demonstrate its relevance to social network analysis.
机译:在本文中,我们介绍了分析复杂网络结构稳健性的措施,这在有针对性的持续攻击方案中特别适用。该测量基于网络通过崩解而变化的最大组件的变化。我们认为该措施可用于量化和比较各种攻击策略的有效性。应用这一措施,我们确认了无规模网络的结果比较不容易受到随机攻击和更容易受到目标攻击的影响。然后,我们分析了一系列现实世界网络的稳健性,并表明大多数现实网络基于节点之间的攻击是最不稳健的。我们还表明,与其他网络相比,某些网络的稳健性对攻击策略更敏感,并且在计算各种中心度量的计算复杂性中,引入的稳健性系数可以在选择攻击和防御策略方面发挥关键作用对于现实世界网络。虽然该措施适用于所有类型的复杂网络,但我们清楚地证明了其与社交网络分析的相关性。

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