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arxiv 2108.13980 v1 pith:R4FR7KUS submitted 2021-08-31 cs.CR cs.AI

Incorporating Deception into CyberBattleSim for Autonomous Defense

classification cs.CR cs.AI
keywords deceptiveelementscyberbattlesimdefensedefensivewerealgorithmsattack
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Deceptive elements, including honeypots and decoys, were incorporated into the Microsoft CyberBattleSim experimentation and research platform. The defensive capabilities of the deceptive elements were tested using reinforcement learning based attackers in the provided capture the flag environment. The attacker's progress was found to be dependent on the number and location of the deceptive elements. This is a promising step toward reproducibly testing attack and defense algorithms in a simulated enterprise network with deceptive defensive elements.

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