A Nominal Approach to Probabilistic Separation Logic
May 10, 2024 Β· Declared Dead Β· π Logic in Computer Science
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Authors
John M. Li, Jon Aytac, Philip Johnson-Freyd, Amal Ahmed, Steven Holtzen
arXiv ID
2405.06826
Category
cs.PL: Programming Languages
Cross-listed
cs.LO
Citations
10
Venue
Logic in Computer Science
Last Checked
3 months ago
Abstract
Currently, there is a gap between the tools used by probability theorists and those used in formal reasoning about probabilistic programs. On the one hand, a probability theorist decomposes probabilistic state along the simple and natural product of probability spaces. On the other hand, recently developed probabilistic separation logics decompose state via relatively unfamiliar measure-theoretic constructions for computing unions of sigma-algebras and probability measures. We bridge the gap between these two perspectives by showing that these two methods of decomposition are equivalent up to a suitable equivalence of categories. Our main result is a probabilistic analog of the classic equivalence between the category of nominal sets and the Schanuel topos. Through this equivalence, we validate design decisions in prior work on probabilistic separation logic and create new connections to nominal-set-like models of probability.
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