Cyber security and resilience are major challenges in our modern economies; this is why they are top priorities on the agenda of governments, security and defense forces, management of companies and organizations. Hence, the need of a deep understanding of cyber risks to improve resilience. We propose here an analysis of the database of the cyber complaints filed at the {\it Gendarmerie Nationale}. We perform this analysis with a new algorithm developed for non-negative asymmetric heavy-tailed data, which could become a handy tool in applied fields. This method gives a good estimation of the full distribution including the tail. Our study confirms the finiteness of the loss expectation, necessary condition for insurability. Finally, we draw the consequences of this model for risk management, compare its results to other standard EVT models, and lay the ground for a classification of attacks based on the fatness of the tail.
翻译:网络安全和复原力是我们现代经济体面临的主要挑战;正因为如此,它们是政府、安全和国防部队、公司和组织管理议程上的最优先事项。因此,需要深入了解网络风险以提高复原力。我们在此提议分析向国家宪兵队提交的网络投诉数据库。我们用为非负非不对称重尾数据开发的新算法进行分析,这种算法可能成为应用领域的一个手法工具。这种方法很好地估计了包括尾巴在内的全部分布。我们的研究证实了损失预期的有限性,这是不可避免的必要条件。最后,我们为风险管理绘制了这一模型的后果,将其结果与其他标准EVT模型进行比较,并为根据尾巴的脂肪性对攻击进行分类打下基础。