Automatic Probabilistic Program Verification through Random Variable Abstraction

The weakest pre-expectation calculus has been proved to be a mature theory to analyze quantitative properties of probabilistic and nondeterministic programs. We present an automatic method for proving quantitative linear properties on any denumerable state space using iterative backwards fixed point...

Full description

Bibliographic Details
Main Authors: Damián Barsotti, Nicolás Wolovick
Format: Article
Language:English
Published: Open Publishing Association 2010-06-01
Series:Electronic Proceedings in Theoretical Computer Science
Online Access:http://arxiv.org/pdf/1006.5096v1
id doaj-3a0d219b785d4c8c9bc49ebeea8dba62
record_format Article
spelling doaj-3a0d219b785d4c8c9bc49ebeea8dba622020-11-25T00:05:42ZengOpen Publishing AssociationElectronic Proceedings in Theoretical Computer Science2075-21802010-06-0128Proc. QAPL 2010344710.4204/EPTCS.28.3Automatic Probabilistic Program Verification through Random Variable AbstractionDamián BarsottiNicolás WolovickThe weakest pre-expectation calculus has been proved to be a mature theory to analyze quantitative properties of probabilistic and nondeterministic programs. We present an automatic method for proving quantitative linear properties on any denumerable state space using iterative backwards fixed point calculation in the general framework of abstract interpretation. In order to accomplish this task we present the technique of random variable abstraction (RVA) and we also postulate a sufficient condition to achieve exact fixed point computation in the abstract domain. The feasibility of our approach is shown with two examples, one obtaining the expected running time of a probabilistic program, and the other the expected gain of a gambling strategy. Our method works on general guarded probabilistic and nondeterministic transition systems instead of plain pGCL programs, allowing us to easily model a wide range of systems including distributed ones and unstructured programs. We present the operational and weakest precondition semantics for this programs and prove its equivalence. http://arxiv.org/pdf/1006.5096v1
collection DOAJ
language English
format Article
sources DOAJ
author Damián Barsotti
Nicolás Wolovick
spellingShingle Damián Barsotti
Nicolás Wolovick
Automatic Probabilistic Program Verification through Random Variable Abstraction
Electronic Proceedings in Theoretical Computer Science
author_facet Damián Barsotti
Nicolás Wolovick
author_sort Damián Barsotti
title Automatic Probabilistic Program Verification through Random Variable Abstraction
title_short Automatic Probabilistic Program Verification through Random Variable Abstraction
title_full Automatic Probabilistic Program Verification through Random Variable Abstraction
title_fullStr Automatic Probabilistic Program Verification through Random Variable Abstraction
title_full_unstemmed Automatic Probabilistic Program Verification through Random Variable Abstraction
title_sort automatic probabilistic program verification through random variable abstraction
publisher Open Publishing Association
series Electronic Proceedings in Theoretical Computer Science
issn 2075-2180
publishDate 2010-06-01
description The weakest pre-expectation calculus has been proved to be a mature theory to analyze quantitative properties of probabilistic and nondeterministic programs. We present an automatic method for proving quantitative linear properties on any denumerable state space using iterative backwards fixed point calculation in the general framework of abstract interpretation. In order to accomplish this task we present the technique of random variable abstraction (RVA) and we also postulate a sufficient condition to achieve exact fixed point computation in the abstract domain. The feasibility of our approach is shown with two examples, one obtaining the expected running time of a probabilistic program, and the other the expected gain of a gambling strategy. Our method works on general guarded probabilistic and nondeterministic transition systems instead of plain pGCL programs, allowing us to easily model a wide range of systems including distributed ones and unstructured programs. We present the operational and weakest precondition semantics for this programs and prove its equivalence.
url http://arxiv.org/pdf/1006.5096v1
work_keys_str_mv AT damianbarsotti automaticprobabilisticprogramverificationthroughrandomvariableabstraction
AT nicolaswolovick automaticprobabilisticprogramverificationthroughrandomvariableabstraction
_version_ 1725423775329026048