We present an exact approach to analyze and quantify the sensitivity of higher moments of probabilistic loops with symbolic parameters, polynomial arithmetic and potentially uncountable state spaces. Our approach integrates methods from symbolic computation, probability theory, and static analysis in order to automatically capture sensitivity information about probabilistic loops. Sensitivity information allows us to formally establish how value distributions of probabilistic loop variables influence the functional behavior of loops, which can in particular be helpful when choosing values of loop variables in order to ensure efficient/expected computations. Our work uses algebraic techniques to model higher moments of loop variables via lin...
Sensitivity analysis of Markovian models amounts to computing the constants in polynomial functions...
We provide a novel method for sensitivity analysis of parametric robust Markov chains. These models ...
International audienceThe paper introduces symbolic bisimulations for a simple probabilistic π-calcu...
We present a novel static analysis technique to derive higher moments for program variables for a la...
One of the main challenges in the analysis of probabilistic programs is to compute invariant propert...
The notion of program sensitivity (aka Lipschitz continuity) specifies that changes in the program i...
International audienceProgram sensitivity, also known as Lipschitz continuity, describes how small c...
Abstract. Sensitivity analysis is a general technique for investigating the robust-ness of the outpu...
Probabilistic software analysis aims at quantifying the probability of a target event occurring duri...
Recently we have proposed symbolic execution techniques for the probabilistic analysis of programs. ...
Summary. In many areas of science and technology, mathematical models are built to simu-late complex...
This paper provides a survey of recent work on adapting techniques for program analysis to compute p...
The sensitivities revealed by a sensitivity anal-ysis of a probabilistic network typically depend on...
Sensitivity methods for the analysis of the outputs of discrete Bayesian networks have been extensiv...
We present static analyses for probabilistic loops using expectation invariants. Probabilistic loops...
Sensitivity analysis of Markovian models amounts to computing the constants in polynomial functions...
We provide a novel method for sensitivity analysis of parametric robust Markov chains. These models ...
International audienceThe paper introduces symbolic bisimulations for a simple probabilistic π-calcu...
We present a novel static analysis technique to derive higher moments for program variables for a la...
One of the main challenges in the analysis of probabilistic programs is to compute invariant propert...
The notion of program sensitivity (aka Lipschitz continuity) specifies that changes in the program i...
International audienceProgram sensitivity, also known as Lipschitz continuity, describes how small c...
Abstract. Sensitivity analysis is a general technique for investigating the robust-ness of the outpu...
Probabilistic software analysis aims at quantifying the probability of a target event occurring duri...
Recently we have proposed symbolic execution techniques for the probabilistic analysis of programs. ...
Summary. In many areas of science and technology, mathematical models are built to simu-late complex...
This paper provides a survey of recent work on adapting techniques for program analysis to compute p...
The sensitivities revealed by a sensitivity anal-ysis of a probabilistic network typically depend on...
Sensitivity methods for the analysis of the outputs of discrete Bayesian networks have been extensiv...
We present static analyses for probabilistic loops using expectation invariants. Probabilistic loops...
Sensitivity analysis of Markovian models amounts to computing the constants in polynomial functions...
We provide a novel method for sensitivity analysis of parametric robust Markov chains. These models ...
International audienceThe paper introduces symbolic bisimulations for a simple probabilistic π-calcu...