International audienceWe consider the model-checking problem for parametric probabilistic dynamical systems, formalised as Markov chains with parametric transition functions, analysed under the distribution-transformer semantics (in which a Markov chain induces a sequence of distributions over states). We examine the problem of synthesising the set of parameter valuations of a parametric Markov chain such that the orbits of induced state distributions satisfy a prefix-independent ω-regular property. Our main result establishes that in all non-degenerate instances, the feasible set of parameters is (up to a null set) semialgebraic, and can moreover be computed (in polynomial time assuming that the ambient dimension, corresponding to the numb...
Probabilistic modelling has proved useful to analyse performance, reliability and energy usage of di...
Markov chain analysis is a key technique in reliability engineering. A practical obstacle is that al...
AELOS_HCERES2020, STR_HCERES2020Interval Markov Chains (IMCs) are the base of a classic probabilisti...
International audienceWe consider the model-checking problem for parametric probabilistic dynamical ...
International audienceWe consider the model-checking problem for parametric probabilistic dynamical ...
International audienceWe consider the model-checking problem for parametric probabilistic dynamical ...
Markov models comprise states with probabilistic transitions. The analysis of these models is ubiqui...
International audienceInterval Markov Chains (IMCs) are the base of a classic prob-abilistic specifi...
International audienceInterval Markov Chains (IMCs) are the base of a classic prob-abilistic specifi...
This paper surveys the analysis of parametric Markov models whose transitions are labelled with func...
This dissertation considers three important aspects of model checking Markov models: diagnosis --- g...
We propose a simulation-based technique, in the spirit of Statistical Model Checking, for approximat...
Abstract. We develop a model of Parametric Probabilistic Transition Systems, where probabilities ass...
We consider Markov Decision Processes (MDPs) as transformers on probability distributions, where wit...
Abstract. The paper shows how bounded model checking can be ap-plied to parameter synthesis for para...
Probabilistic modelling has proved useful to analyse performance, reliability and energy usage of di...
Markov chain analysis is a key technique in reliability engineering. A practical obstacle is that al...
AELOS_HCERES2020, STR_HCERES2020Interval Markov Chains (IMCs) are the base of a classic probabilisti...
International audienceWe consider the model-checking problem for parametric probabilistic dynamical ...
International audienceWe consider the model-checking problem for parametric probabilistic dynamical ...
International audienceWe consider the model-checking problem for parametric probabilistic dynamical ...
Markov models comprise states with probabilistic transitions. The analysis of these models is ubiqui...
International audienceInterval Markov Chains (IMCs) are the base of a classic prob-abilistic specifi...
International audienceInterval Markov Chains (IMCs) are the base of a classic prob-abilistic specifi...
This paper surveys the analysis of parametric Markov models whose transitions are labelled with func...
This dissertation considers three important aspects of model checking Markov models: diagnosis --- g...
We propose a simulation-based technique, in the spirit of Statistical Model Checking, for approximat...
Abstract. We develop a model of Parametric Probabilistic Transition Systems, where probabilities ass...
We consider Markov Decision Processes (MDPs) as transformers on probability distributions, where wit...
Abstract. The paper shows how bounded model checking can be ap-plied to parameter synthesis for para...
Probabilistic modelling has proved useful to analyse performance, reliability and energy usage of di...
Markov chain analysis is a key technique in reliability engineering. A practical obstacle is that al...
AELOS_HCERES2020, STR_HCERES2020Interval Markov Chains (IMCs) are the base of a classic probabilisti...