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 ...
International audienceMonte Carlo simulations may be used to efficiently estimate critical propertie...
International audienceVerifying the correctness of systems-of-systems (SoS) is a key challenge, larg...
We develop an abstraction-based framework to check probabilistic specifications of Markov Decision P...
International audienceThis paper investigates the combined use of abstraction and probabilistic lear...
International audienceQuantitative properties of stochastic systems are usually specified in logics ...
International audienceStatistical Model Checking (SMC) is a compromise between verification and test...
International audienceThis paper contains material for our tutorial presented at STRESS 2016. This i...
Dans cette thèse, nous nous sommes attaché à étudier l'apport de méthodes probabilistes au model che...
Abstraction is one of the most important issues to cope with large and infinite state spaces in mode...
Formal methods are mathematical techniques used in the development of trustworthy ICT systems. Their...
In model checking, program correctness on all inputs is verified by considering the transition syste...
http://www.win.tue.nl/~jromijn/Our research focuses on verification techniques for real-time systems...
International audienceThe model-checking problem for Software Products Lines (SPLs) is harder than f...
Model-checking is an automated technique which aims at verifying properties of computer systems. A m...
Abstract. Abstraction is the key for effectively dealing with the state explosionproblem in model-ch...
International audienceMonte Carlo simulations may be used to efficiently estimate critical propertie...
International audienceVerifying the correctness of systems-of-systems (SoS) is a key challenge, larg...
We develop an abstraction-based framework to check probabilistic specifications of Markov Decision P...
International audienceThis paper investigates the combined use of abstraction and probabilistic lear...
International audienceQuantitative properties of stochastic systems are usually specified in logics ...
International audienceStatistical Model Checking (SMC) is a compromise between verification and test...
International audienceThis paper contains material for our tutorial presented at STRESS 2016. This i...
Dans cette thèse, nous nous sommes attaché à étudier l'apport de méthodes probabilistes au model che...
Abstraction is one of the most important issues to cope with large and infinite state spaces in mode...
Formal methods are mathematical techniques used in the development of trustworthy ICT systems. Their...
In model checking, program correctness on all inputs is verified by considering the transition syste...
http://www.win.tue.nl/~jromijn/Our research focuses on verification techniques for real-time systems...
International audienceThe model-checking problem for Software Products Lines (SPLs) is harder than f...
Model-checking is an automated technique which aims at verifying properties of computer systems. A m...
Abstract. Abstraction is the key for effectively dealing with the state explosionproblem in model-ch...
International audienceMonte Carlo simulations may be used to efficiently estimate critical propertie...
International audienceVerifying the correctness of systems-of-systems (SoS) is a key challenge, larg...
We develop an abstraction-based framework to check probabilistic specifications of Markov Decision P...