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Relational reasoning via probabilistic coupling

Authors :
Barthe, Gilles
Espitau, Thomas
Grégoire, Benjamin
Hsu, Justin
Stefanesco, Léo
Strub, Pierre-Yves
Barthe, Gilles
Espitau, Thomas
Grégoire, Benjamin
Hsu, Justin
Stefanesco, Léo
Strub, Pierre-Yves
Publication Year :
2015

Abstract

Probabilistic coupling is a powerful tool for analyzing pairs of probabilistic processes. Roughly, coupling two processes requires finding an appropriate witness process that models both processes in the same probability space. Couplings are powerful tools proving properties about the relation between two processes, include reasoning about convergence of distributions and stochastic dominance---a probabilistic version of a monotonicity property. While the mathematical definition of coupling looks rather complex and cumbersome to manipulate, we show that the relational program logic pRHL---the logic underlying the EasyCrypt cryptographic proof assistant---already internalizes a generalization of probabilistic coupling. With this insight, constructing couplings is no harder than constructing logical proofs. We demonstrate how to express and verify classic examples of couplings in pRHL, and we mechanically verify several couplings in EasyCrypt.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1106224773
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1007.978-3-662-48899-7_27