SoK:量化网络风险

Daniel W. Woods, Rainer Böhme
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引用次数: 20

摘要

本文介绍了一个受结构方程模型启发的因果模型,该模型根据使用反射指标测量的潜在因素来解释网络风险结果。首先,我们使用该模型对网络危害实证研究进行分类。我们发现,就典型或极端损失而言,网络危害并不罕见。数据泄露事件越来越频繁,这引发了争议,随着时间的推移,股市对网络事件的反应正变得越来越不具破坏性。只关注危害会滋生宿命论;因果模型在评估安全干预措施的有效性方面最有用。我们展示了简单的统计关系如何导致虚假的结果,其中更多的安全支出或应用更新与更高的妥协率相关。当考虑到威胁和暴露时,安全指标被证明是解释妥协率差异的重要因素,特别是当研究使用安全水平的多个指标时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SoK: Quantifying Cyber Risk
This paper introduces a causal model inspired by structural equation modeling that explains cyber risk outcomes in terms of latent factors measured using reflexive indicators. First, we use the model to classify empirical cyber harm studies. We discover cyber harms are not exceptional in terms of typical or extreme losses. The increasing frequency of data breaches is contested and stock market reactions to cyber incidents are becoming less damaging over time. Focusing on harms alone breeds fatalism; the causal model is most useful in evaluating the effectiveness of security interventions. We show how simple statistical relationships lead to spurious results in which more security spending or applying updates are associated with greater rates of compromise. When accounting for threat and exposure, indicators of security are shown to be important factors in explaining the variance in rates of compromise, especially when the studies use multiple indicators of the security level.
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