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Filters: Author is Zhu, Minghui  [Clear All Filters]
2018-03-26
Hu, Zhisheng, Zhu, Minghui, Liu, Peng.  2017.  Online Algorithms for Adaptive Cyber Defense on Bayesian Attack Graphs. Proceedings of the 2017 Workshop on Moving Target Defense. :99–109.

Emerging zero-day vulnerabilities in information and communications technology systems make cyber defenses very challenging. In particular, the defender faces uncertainties of; e.g., system states and the locations and the impacts of vulnerabilities. In this paper, we study the defense problem on a computer network that is modeled as a partially observable Markov decision process on a Bayesian attack graph. We propose online algorithms which allow the defender to identify effective defense policies when utility functions are unknown a priori. The algorithm performance is verified via numerical simulations based on real-world attacks.