Cyber risk is a major challenge in the digital economy, requiring appropriate statistical methodologies for accurate assessment and evaluation. This work illustrates different statistical approaches to model cyber risk, addressing multiple aspects of the problem. Our analysis is structured around various methodological frameworks. First, we employ ordered response models to evaluate the severity of cyber attacks, expressed on an ordinal scale, as a function of the characteristics of the attacks. Second, we employ network-based models to assess vulnerabilities among cyber attack victims. Finally, we introduce a distributional inference approach based on Wasserstein propagation to estimate cyber risk at the country level, particularly for regions with limited data availability. The proposed methodologies are applied to real-world data on cyber attacks that have occurred worldwide over the past decades. This research provides valuable information for policy makers and industry stakeholders to improve cybersecurity strategies.
Tarantola, C., Facchinetti, S., Osmetti, S. A., Spelta, A., Cyber Risk: Statistical Approaches and Insights, in Enrico Di Bella, V. G. L. S. Z. (ed.), Italian Statistical Society Series on Advances in Statistics-Statistics for Innovation I, Springer, Cham 2025: 44- 49. 10.1007/978-3-031-96736-8_8 [https://hdl.handle.net/10807/322499]
Cyber Risk: Statistical Approaches and Insights
Osmetti, Silvia Angela;
2025
Abstract
Cyber risk is a major challenge in the digital economy, requiring appropriate statistical methodologies for accurate assessment and evaluation. This work illustrates different statistical approaches to model cyber risk, addressing multiple aspects of the problem. Our analysis is structured around various methodological frameworks. First, we employ ordered response models to evaluate the severity of cyber attacks, expressed on an ordinal scale, as a function of the characteristics of the attacks. Second, we employ network-based models to assess vulnerabilities among cyber attack victims. Finally, we introduce a distributional inference approach based on Wasserstein propagation to estimate cyber risk at the country level, particularly for regions with limited data availability. The proposed methodologies are applied to real-world data on cyber attacks that have occurred worldwide over the past decades. This research provides valuable information for policy makers and industry stakeholders to improve cybersecurity strategies.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.



