Deep VULMAN: A Deep Reinforcement Learning-Enabled Cyber Vulnerability Management Framework
August 03, 2022 Β· Declared Dead Β· π Expert systems with applications
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Authors
Soumyadeep Hore, Ankit Shah, Nathaniel D. Bastian
arXiv ID
2208.02369
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CR,
cs.NE
Citations
28
Venue
Expert systems with applications
Last Checked
4 months ago
Abstract
Cyber vulnerability management is a critical function of a cybersecurity operations center (CSOC) that helps protect organizations against cyber-attacks on their computer and network systems. Adversaries hold an asymmetric advantage over the CSOC, as the number of deficiencies in these systems is increasing at a significantly higher rate compared to the expansion rate of the security teams to mitigate them in a resource-constrained environment. The current approaches are deterministic and one-time decision-making methods, which do not consider future uncertainties when prioritizing and selecting vulnerabilities for mitigation. These approaches are also constrained by the sub-optimal distribution of resources, providing no flexibility to adjust their response to fluctuations in vulnerability arrivals. We propose a novel framework, Deep VULMAN, consisting of a deep reinforcement learning agent and an integer programming method to fill this gap in the cyber vulnerability management process. Our sequential decision-making framework, first, determines the near-optimal amount of resources to be allocated for mitigation under uncertainty for a given system state and then determines the optimal set of prioritized vulnerability instances for mitigation. Our proposed framework outperforms the current methods in prioritizing the selection of important organization-specific vulnerabilities, on both simulated and real-world vulnerability data, observed over a one-year period.
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