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Higher-order probabilistic adversarial computations: Categorical semantics and program logics

Authors :
Aguirre, Alejandro
Barthe, Gilles
Gaboardi, Marco
Garg, Deepak
Katsumata, Shin-ya
Sato, Tetsuya
Publication Year :
2021

Abstract

Adversarial computations are a widely studied class of computations where resource-bounded probabilistic adversaries have access to oracles, i.e., probabilistic procedures with private state. These computations arise routinely in several domains, including security, privacy and machine learning. In this paper, we develop program logics for reasoning about adversarial computations in a higher-order setting. Our logics are built on top of a simply typed $\lambda$-calculus extended with a graded monad for probabilities and state. The grading is used to model and restrict the memory footprint and the cost (in terms of oracle calls) of computations. Under this view, an adversary is a higher-order expression that expects as arguments the code of its oracles. We develop unary program logics for reasoning about error probabilities and expected values, and a relational logic for reasoning about coupling-based properties. All logics feature rules for adversarial computations, and yield guarantees that are valid for all adversaries that satisfy a fixed resource policy. We prove the soundness of the logics in the category of quasi-Borel spaces, using a general notion of graded predicate liftings, and we use logical relations over graded predicate liftings to establish the soundness of proof rules for adversaries. We illustrate the working of our logics with simple but illustrative examples.<br />Comment: Full version of ICFP 21 paper

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2107.01155
Document Type :
Working Paper