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Probabilistic Opacity in Refinement-Based Modeling

Abstract

Given a probabilistic transition system (PTS) A\cal A partially observed by an attacker, and an ω\omega-regular predicate φ\varphiover the traces of A\cal A, measuring the disclosure of the secret φ\varphi in A\cal A means computing the probability that an attacker who observes a run of A\cal A can ascertain that its trace belongs to φ\varphi. In the context of refinement, we consider specifications given as Interval-valued Discrete Time Markov Chains (IDTMCs), which are underspecified Markov chains where probabilities on edges are only required to belong to intervals. Scheduling an IDTMC S\cal S produces a concrete implementation as a PTS and we define the worst case disclosure of secret φ\varphi in S{\cal S} as the maximal disclosure of φ\varphi over all PTSs thus produced. We compute this value for a subclass of IDTMCs and we prove that refinement can only improve the opacity of implementations.

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