Abstract. Given a parametric Markov model, we consider the problem of computing the rational function expressing the probability of reaching a given set of states. To attack this principal problem, Daws has suggested to first convert the Markov chain into a finite automaton, from which a regular expression is computed. Afterwards, this expression is evaluated to a closed form function representing the reachability probability. This paper investigates how this idea can be turned into an effective procedure. It turns out that the bottleneck lies in the growth of the regular expression relative to the number of states (nΘ(logn)). We therefore proceed differently, by tightly intertwining the regular expression computation with its evaluation. T...
In this paper, we propose an approximating framework for analyzing parametric Markov models. Instead...
Probabilistic model checking is a formal verification method, which is used to guarantee the correct...
In this paper, we consider the behavioral pseu-dometrics for probabilistic systems. The model we are...
This dissertation considers three important aspects of model checking Markov models: diagnosis --- g...
3 In this thesis we present a new approach for model checking Parametric Markov Chains (PMCs). In PM...
International audienceTime-bounded reachability problems are concerned with assessing whether a mode...
Abstract. We present a novel technique to analyze the bounded reach-ability probability problem for ...
We report on new strategies for model checking quantitative reachability properties of Markov decisi...
Markov models comprise states with probabilistic transitions. The analysis of these models is ubiqui...
We show that the problem of reaching a state set with probability 1 in probabilisticnondeterministic...
We consider the following decision problem: given a finite Markov chain with distinguished source an...
This paper proposes a technique to synthesize parametric rate values in continuous-time Markov chain...
Parametric Interval Markov Chains (pIMCs) are a specification formalism that extend Markov Chains (M...
International audienceParametric Interval Markov Chains (pIMCs) are a specification formalism that e...
Abstract — We propose a novel stochastic extension of timed automata, i.e. Markovian Timed Automata....
In this paper, we propose an approximating framework for analyzing parametric Markov models. Instead...
Probabilistic model checking is a formal verification method, which is used to guarantee the correct...
In this paper, we consider the behavioral pseu-dometrics for probabilistic systems. The model we are...
This dissertation considers three important aspects of model checking Markov models: diagnosis --- g...
3 In this thesis we present a new approach for model checking Parametric Markov Chains (PMCs). In PM...
International audienceTime-bounded reachability problems are concerned with assessing whether a mode...
Abstract. We present a novel technique to analyze the bounded reach-ability probability problem for ...
We report on new strategies for model checking quantitative reachability properties of Markov decisi...
Markov models comprise states with probabilistic transitions. The analysis of these models is ubiqui...
We show that the problem of reaching a state set with probability 1 in probabilisticnondeterministic...
We consider the following decision problem: given a finite Markov chain with distinguished source an...
This paper proposes a technique to synthesize parametric rate values in continuous-time Markov chain...
Parametric Interval Markov Chains (pIMCs) are a specification formalism that extend Markov Chains (M...
International audienceParametric Interval Markov Chains (pIMCs) are a specification formalism that e...
Abstract — We propose a novel stochastic extension of timed automata, i.e. Markovian Timed Automata....
In this paper, we propose an approximating framework for analyzing parametric Markov models. Instead...
Probabilistic model checking is a formal verification method, which is used to guarantee the correct...
In this paper, we consider the behavioral pseu-dometrics for probabilistic systems. The model we are...