Abstract. This paper proposes an algorithm for exact computation of bisimilarity distances between discrete-time Markov chains introduced by Desharnais et. al. Our work is inspired by the theoretical results pre-sented by Chen et. al. at FoSSaCS’12, proving that these distances can be computed in polynomial time using the ellipsoid method. Despite its theoretical importance, the ellipsoid method is known to be inef-ficient in practice. To overcome this problem, we propose an efficient on-the-fly algorithm which, unlike other existing solutions, computes ex-actly the distances between given states and avoids the exhaustive state space exploration. It is parametric in a given set of states for which we want to compute the distances. Our techn...
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
We address the behavioral metric-based approximate minimization problem of Markov Chains (MCs), i.e....
Simulation and bisimulation metrics for stochastic systems provide a quantitative generaliza-tion of...
Abstract. We propose a distance between continuous-time Markov chains (CTMCs) and study the problem ...
We propose a distance between continuous-time Markov chains (CTMCs) and studythe problem of computin...
We propose a distance between continuous-time Markov chains (CTMCs) and study the problem of computi...
Abstract. This paper presents a library for exactly computing the bisim-ilarity Kantorovich-based ps...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
In the late nineties, Desharnais, Gupta, Jagadeesan and Panangaden presented probabilistic bisimilar...
In this paper we propose a complete axiomatization of the bisimilaritydistance of Desharnais et al. ...
A transformation mapping a labelled Markov chain to a simple stochastic game is presented. In the r...
Probabilistic bisimilarity, due to Segala and Lynch, is an equivalence relation that captures which ...
Probabilistic bisimilarity distances [3] measure the similarity of behaviour of states of a labelled...
We propose polynomial-time algorithms to minimise labelled Markov chains whose transition probabilit...
In this paper we propose a complete axiomatization of the bisimilarity distance of Desharnais et al....
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
We address the behavioral metric-based approximate minimization problem of Markov Chains (MCs), i.e....
Simulation and bisimulation metrics for stochastic systems provide a quantitative generaliza-tion of...
Abstract. We propose a distance between continuous-time Markov chains (CTMCs) and study the problem ...
We propose a distance between continuous-time Markov chains (CTMCs) and studythe problem of computin...
We propose a distance between continuous-time Markov chains (CTMCs) and study the problem of computi...
Abstract. This paper presents a library for exactly computing the bisim-ilarity Kantorovich-based ps...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
In the late nineties, Desharnais, Gupta, Jagadeesan and Panangaden presented probabilistic bisimilar...
In this paper we propose a complete axiomatization of the bisimilaritydistance of Desharnais et al. ...
A transformation mapping a labelled Markov chain to a simple stochastic game is presented. In the r...
Probabilistic bisimilarity, due to Segala and Lynch, is an equivalence relation that captures which ...
Probabilistic bisimilarity distances [3] measure the similarity of behaviour of states of a labelled...
We propose polynomial-time algorithms to minimise labelled Markov chains whose transition probabilit...
In this paper we propose a complete axiomatization of the bisimilarity distance of Desharnais et al....
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
We address the behavioral metric-based approximate minimization problem of Markov Chains (MCs), i.e....
Simulation and bisimulation metrics for stochastic systems provide a quantitative generaliza-tion of...