International audienceThis paper investigates the combined use of abstraction and probabilistic learning as a means to enhance statistical model checking performance. We are given a property (or a list of properties) for verification on a (large) stochastic system. We project on a set of traces generated from the original system, and learn a (small) abstract model from the projected traces, which contain only those labels that are relevant to the property to be verified. Then, we model-check the property on the reduced, abstract model instead of the large, original system. In this paper, we propose a formal definition of the projection on traces given a property to verify. We also provide conditions ensuring the correct preservation of the ...
Probabilistic model checking – the verification of models incorporating ran-dom phenomena – has enjo...
State-space reduction for probabilistic model checking Description Model-checking is a popular verif...
This paper presents a novel approach for augmenting proof-based verification with performance-style ...
International audienceThis paper investigates the combined use of abstraction and probabilistic lear...
In model checking, program correctness on all inputs is verified by considering the transition syste...
International audienceQuantitative properties of stochastic systems are usually specified in logics ...
Abstract. Quantitative properties of stochastic systems are usually spec-ified in logics that allow ...
Abstract. State spaces represent the way a system evolves through its different possible executions....
Formal methods are mathematical techniques used in the development of trustworthy ICT systems. Their...
Dans cette thèse, nous nous sommes attaché à étudier l'apport de méthodes probabilistes au model che...
Random phenomena occur in many applications: security, communication protocols, distributed algorith...
Many software systems exhibit probabilistic behaviour, either added explicitly, to improve performan...
Statistical model checking of non-deterministic programs Description Statistical model checking refe...
Statistical Model Checking (SMC) is a powerful and widely used approach that consists in estimating ...
Abstract. Statistical methods to model check stochastic systems have been, thus far, developed only ...
Probabilistic model checking – the verification of models incorporating ran-dom phenomena – has enjo...
State-space reduction for probabilistic model checking Description Model-checking is a popular verif...
This paper presents a novel approach for augmenting proof-based verification with performance-style ...
International audienceThis paper investigates the combined use of abstraction and probabilistic lear...
In model checking, program correctness on all inputs is verified by considering the transition syste...
International audienceQuantitative properties of stochastic systems are usually specified in logics ...
Abstract. Quantitative properties of stochastic systems are usually spec-ified in logics that allow ...
Abstract. State spaces represent the way a system evolves through its different possible executions....
Formal methods are mathematical techniques used in the development of trustworthy ICT systems. Their...
Dans cette thèse, nous nous sommes attaché à étudier l'apport de méthodes probabilistes au model che...
Random phenomena occur in many applications: security, communication protocols, distributed algorith...
Many software systems exhibit probabilistic behaviour, either added explicitly, to improve performan...
Statistical model checking of non-deterministic programs Description Statistical model checking refe...
Statistical Model Checking (SMC) is a powerful and widely used approach that consists in estimating ...
Abstract. Statistical methods to model check stochastic systems have been, thus far, developed only ...
Probabilistic model checking – the verification of models incorporating ran-dom phenomena – has enjo...
State-space reduction for probabilistic model checking Description Model-checking is a popular verif...
This paper presents a novel approach for augmenting proof-based verification with performance-style ...