德国组织最大网络事件损失建模:一项实证研究和修正的极值分布方法。

Bennet von Skarczinski, Mathias Raschke, Frank Teuteberg
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引用次数: 0

摘要

网络事件是组织最关键的商业风险之一,可能导致巨大的财务损失。然而,以前关于损失建模的研究是基于未经保证的数据源,因为无法保证运营风险数据库的代表性和完整性。此外,缺乏关注尾部行为并充分考虑极端损失的建模方法。在本文中,我们介绍了一种新的“调和”广义极值(GEV)方法。基于5000家受访德国组织的分层随机样本,我们对不同的损失分布进行了建模,并使用图形分析和拟合优度检验将其与我们的经验数据进行了比较。我们区分了各种子样本(行业、规模、攻击类型、损失类型),发现我们修改的GEV优于其他分布,如对数正态分布和威布尔分布。最后,我们计算了德国经济的损失,给出了应用实例,得出了启示,并讨论了文献中损失估计的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Modelling maximum cyber incident losses of German organisations: an empirical study and modified extreme value distribution approach.

Modelling maximum cyber incident losses of German organisations: an empirical study and modified extreme value distribution approach.

Cyber incidents are among the most critical business risks for organisations and can lead to large financial losses. However, previous research on loss modelling is based on unassured data sources because the representativeness and completeness of op-risk databases cannot be assured. Moreover, there is a lack of modelling approaches that focus on the tail behaviour and adequately account for extreme losses. In this paper, we introduce a novel 'tempered' generalised extreme value (GEV) approach. Based on a stratified random sample of 5000 interviewed German organisations, we model different loss distributions and compare them to our empirical data using graphical analysis and goodness-of-fit tests. We differentiate various subsamples (industry, size, attack type, loss type) and find our modified GEV outperforms other distributions, such as the lognormal and Weibull distributions. Finally, we calculate losses for the German economy, present application examples, derive implications as well as discuss the comparison of loss estimates in the literature.

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