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Divergences on Monads for Relational Program Logics

Authors :
Sato, Tetsuya
Katsumata, Shin-ya
Publication Year :
2022

Abstract

Several relational program logics have been introduced for integrating reasoning about relational properties of programs and measurement of quantitative difference between computational effects. Towards a general framework for such logics, in this paper, we formalize quantitative difference between computational effects as divergence on monad, then develop a relational program logic acRL that supports generic computational effects and divergences on them. To give a categorical semantics of acRL supporting divergences, we give a method to obtain graded strong relational liftings from divergences on monads. We derive two instantiations of acRL for the verification of 1) various differential privacy of higher-order functional probabilistic programs and 2) difference of distribution of costs between higher-order functional programs with probabilistic choice and cost counting operations.<br />Preprint

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....760e8517a4b8fd193d97b7b7c69b10b9