基于多目标优化的复杂网络序列攻击关键节点检测

Lei Zhang, Qing Liu, Jiajun Xia, Haipeng Yang, Xing-yi Zhang
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引用次数: 1

摘要

基于级联失效模型的连续攻击关键节点检测是分析网络漏洞的重要手段,近年来受到复杂网络领域研究者的广泛关注。然而,现有的级联关键节点检测算法大多侧重于设计有效的攻击策略,使网络受到最大的损害(即攻击效果),而忽略了攻击的代价。为此,我们将序列攻击的级联关键节点检测转化为双目标优化问题(BCVNDSeq),同时优化攻击代价和攻击效果。为了解决转换后的问题,我们提出了一种多目标级联关键节点检测算法(MO-BCVNDSeq),可以为决策者提供一个整体的视角来分析网络漏洞。在MO-BCVNDSeq中,提出了一种基于序列矩阵的局部搜索策略来加速种群收敛,并提出了一种个体修复策略来进一步提高搜索效率。最后,在6个真实复杂网络上进行了实验,对比了几种具有代表性的基线,验证了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Critical Node Detection for Sequential Attacks in Complex Networks via Multi-objective Optimization
The critical node detection for sequential attacks based on cascading failure model is an important way for analyzing network vulnerability, which has attracted the attention of many researchers in the field of complex network recently. However, most of the existing cascading critical node detection algorithms focus on designing effective attack strategies leading to the maximal damage to the network (i.e. attack effect), while ignoring the cost of attacks. To this end, we transform the cascading critical node detection for sequential attacks as a bi-objective optimization problem (named BCVNDSeq), where the attack cost and the attack effect are simultaneously optimized. In order to solve the transformed problem, we propose a multiobjective cascading critical node detection algorithm (named MO-BCVNDSeq), which can provide decision makers with a holistic view for analyzing the network vulnerability. In MO-BCVNDSeq, a local search strategy based on sequential matrix is proposed to accelerate the population convergence and an individual repairing strategy is also suggested to further improve the search efficiency. Finally, the experimental results on 6 real-world complex networks demonstrate the effectiveness of the proposed algorithm compared with several representative baselines.
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