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首页> 外文期刊>PLoS One >The responsiveness of criminal networks to intentional attacks: Disrupting darknet drug trade
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The responsiveness of criminal networks to intentional attacks: Disrupting darknet drug trade

机译:刑事网络对故意攻击的响应性:扰乱Disknet毒品贸易

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摘要

Physical, technological, and social networks are often at risk of intentional attack. Despite the wide-spanning importance of network vulnerability, very little is known about how criminal networks respond to attacks or whether intentional attacks affect criminal activity in the long-run. To assess criminal network responsiveness, we designed an empirically-grounded agent-based simulation using population-level network data on 16,847 illicit drug exchanges between 7,295 users of an active darknet drug market and statistical methods for simulation analysis. We consider three attack strategies: targeted attacks that delete structurally integral vertices, weak link attacks that delete large numbers of weakly connected vertices, and signal attacks that saturate the network with noisy signals. Results reveal that, while targeted attacks are effective when conducted at a large-scale, weak link and signal attacks deter more potential drug transactions and buyers when only a small portion of the network is attacked. We also find that intentional attacks affect network behavior. When networks are attacked, actors grow more cautious about forging ties, connecting less frequently and only to trustworthy alters. Operating in tandem, these two processes undermine long-term network robustness and increase network vulnerability to future attacks.
机译:物理,技术和社交网络往往面临着故意攻击的风险。尽管网络漏洞的广泛涵义了重要性,但对于刑事网络如何响应攻击或故意攻击在长期影响犯罪活动的情况下,也很少。为了评估刑事网络响应能力,我们设计了一种基于经验的基于代理的代理的模拟,在6,847个非法药物交换机之间的7,295名非法药物市场和用于仿真分析的统计方法之间的统计方法。我们考虑三次攻击策略:删除结构整体顶点的目标攻击,删除大量弱连接顶点的弱链路攻击,以及用噪声信号饱和网络的信号攻击。结果表明,虽然当仅在大规模的弱点和信号攻击时,虽然目标攻击是有效的,但当只有一小部分网络攻击时,较弱的链接和信号攻击导致更多潜在的药物交易和买家。我们还发现故意攻击影响网络行为。当网络受到攻击时,演员对锻造领带更加谨慎地生长,连续频繁地连接,只能为值得信赖的改变。这两种过程在串联中运行,破坏了长期网络的鲁棒性,并增加了对未来攻击的网络漏洞。

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