This work presents an empirical evaluation of automated security probing policies operating under partial observability. We quantify efficiency gains achieved by learned decision models and identify entropy-induced failure regimes that emerge under increasing observational noise. By modeling the interaction as a Partially Observable Markov Decision Process (POMDP), we demonstrate that while learned policies significantly reduce average Time-to-Compromise, they exhibit heavy-tailed operational risk characterized by instability, action thrashing, and elevated detection likelihood. We further propose a hybrid meta-control architecture that bounds worst-case behavior by supervising learned policies with entropy-aware fallback mechanisms. Our results highlight a fundamental efficiency–stability trade-off and provide actionable guidance for the safe deployment of autonomous security decision systems in stochastic environments. -
Benjamín Felipe Pérez Contreras (Tue,) studied this question.
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