2023
DOI: 10.22541/au.169406476.64066230/v1
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EPPTA: Efficient Partially Observable Reinforcement Learning Agent for Penetration testing Applications

Zegang Li,
Qian Zhang,
Guangwen Yang

Abstract: In recent years, penetration testing (pen-testing) has emerged as a crucial process for evaluating the security level of network infrastructures by simulating real-world cyber-attacks. Automating pen-testing through reinforcement learning (RL) facilitates more frequent assessments, minimizes human effort, and enhances scalability. However, real-world pen-testing tasks often involve incomplete knowledge of the target network system. Effectively managing the intrinsic uncertainties via partially observable Marko… Show more

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