2023
DOI: 10.48550/arxiv.2301.06085
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Learning Near-Optimal Intrusion Responses Against Dynamic Attackers

Abstract: We study automated intrusion response and formulate the interaction between an attacker and a defender as an optimal stopping game where attack and defense strategies evolve through reinforcement learning and self-play. The gametheoretic modeling enables us to find defender strategies that are effective against a dynamic attacker, i.e. an attacker that adapts its strategy in response to the defender strategy. Further, the optimal stopping formulation allows us to prove that optimal strategies have threshold pr… Show more

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