1. Modeling Multivariate Cyber Risks: Deep Learning Dating Extreme Value Theory
- Author
-
Maochao Xu, Xing Fang, Mingyue Zhang Wu, Jinzhu Luo, and Peng Zhao
- Subjects
FOS: Computer and information sciences ,Statistics and Probability ,Multivariate statistics ,Computer science ,0211 other engineering and technologies ,Machine Learning (stat.ML) ,02 engineering and technology ,Machine learning ,computer.software_genre ,01 natural sciences ,Statistics - Applications ,Domain (software engineering) ,Task (project management) ,010104 statistics & probability ,Statistics - Machine Learning ,Applications (stat.AP) ,0101 mathematics ,Extreme value theory ,ComputingMilieux_MISCELLANEOUS ,021103 operations research ,business.industry ,Deep learning ,Articles ,Heavy-tailed distribution ,Artificial intelligence ,Statistics, Probability and Uncertainty ,High dimensionality ,business ,computer - Abstract
Modeling cyber risks has been an important but challenging task in the domain of cyber security. It is mainly because of the high dimensionality and heavy tails of risk patterns. Those obstacles have hindered the development of statistical modeling of the multivariate cyber risks. In this work, we propose a novel approach for modeling the multivariate cyber risks which relies on the deep learning and extreme value theory. The proposed model not only enjoys the high accurate point predictions via deep learning but also can provide the satisfactory high quantile prediction via extreme value theory. The simulation study shows that the proposed model can model the multivariate cyber risks very well and provide satisfactory prediction performances. The empirical evidence based on real honeypot attack data also shows that the proposed model has very satisfactory prediction performances., 25 pages
- Published
- 2021