1. A Vine Copula Model for Predicting the Effectiveness of Cyber Defense Early-Warning
- Author
-
Lei Hua, Shouhuai Xu, and Maochao Xu
- Subjects
Statistics and Probability ,Value (ethics) ,Structure (mathematical logic) ,021110 strategic, defence & security studies ,Warning system ,Computer science ,Mechanism (biology) ,Applied Mathematics ,0211 other engineering and technologies ,02 engineering and technology ,computer.software_genre ,01 natural sciences ,Measure (mathematics) ,Vine copula ,010104 statistics & probability ,Cyber defense ,Risk analysis (engineering) ,Modeling and Simulation ,Information system ,Data mining ,0101 mathematics ,computer - Abstract
Internet-based computer information systems play critical roles in many aspects of modern society. However, these systems are constantly under cyber attacks that can cause catastrophic consequences. To defend these systems effectively, it is necessary to measure and predict the effectiveness of cyber defense mechanisms. In this article, we investigate how to measure and predict the effectiveness of an important cyber defense mechanism that is known as early-warning. This turns out to be a challenging problem because we must accommodate the dependence among certain four-dimensional time series. In the course of using a dataset to demonstrate the prediction methodology, we discovered a new nonexchangeable and rotationally symmetric dependence structure, which may be of independent value. We propose a new vine copula model to accommodate the newly discovered dependence structure, and show that the new model can predict the effectiveness of early-warning more accurately than the others. We also discus...
- Published
- 2017