We propose polynomial-time algorithms to minimise labelled Markov chains whose transition probabilities are not known exactly, have been perturbed, or can only be obtained by sampling. Our algorithms are based on a new notion of an approximate bisimulation quotient, obtained by lumping together states that are exactly bisimilar in a slightly perturbed system. We present experiments that show that our algorithms are able to recover the structure of the bisimulation quotient of the unperturbed system
This paper studies the effect of bisimulation minimisation in model checking of monolithic discrete-...
Probabilistic bisimilarity, due to Segala and Lynch, is an equivalence relation that captures which ...
AbstractIn this paper, we consider the behavioral pseudometrics for probabilistic systems, which are...
We propose polynomial-time algorithms to minimise labelled Markov chains whose transition probabilit...
In the late nineties, Desharnais, Gupta, Jagadeesan and Panangaden presented probabilistic bisimilar...
A transformation mapping a labelled Markov chain to a simple stochastic game is presented. In the r...
We address the behavioral metric-based approximate minimization problem of Markov Chains (MCs), i.e....
Behavioural equivalences like probabilistic bisimilarity rely on the transition probabilities and, a...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
We propose a distance between continuous-time Markov chains (CTMCs) and study the problem of computi...
This paper studies the effect of bisimulation minimisation in model checking of monolithic discrete-...
Probabilistic bisimilarity, due to Segala and Lynch, is an equivalence relation that captures which ...
AbstractIn this paper, we consider the behavioral pseudometrics for probabilistic systems, which are...
We propose polynomial-time algorithms to minimise labelled Markov chains whose transition probabilit...
In the late nineties, Desharnais, Gupta, Jagadeesan and Panangaden presented probabilistic bisimilar...
A transformation mapping a labelled Markov chain to a simple stochastic game is presented. In the r...
We address the behavioral metric-based approximate minimization problem of Markov Chains (MCs), i.e....
Behavioural equivalences like probabilistic bisimilarity rely on the transition probabilities and, a...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
We propose a distance between continuous-time Markov chains (CTMCs) and study the problem of computi...
This paper studies the effect of bisimulation minimisation in model checking of monolithic discrete-...
Probabilistic bisimilarity, due to Segala and Lynch, is an equivalence relation that captures which ...
AbstractIn this paper, we consider the behavioral pseudometrics for probabilistic systems, which are...