We propose a distance between continuous-time Markov chains (CTMCs) and study the problem of computing it by comparing three different algorithmic methodologies: iterative, linear program, and on-the-fly. In a work presented at FoSSaCS’12, Chen et al. characterized the bisimilarity distance of Desharnais et al. between discrete-time Markov chains as an optimal solution of a linear program that can be solved by using the ellipsoid method. Inspired by their result, we propose a novel linear program characterization to compute the distance in the continuoustime setting. Differently from previous proposals, ours has a number of constraints that is bounded by a polynomial in the size of the CTMC. This, in particular, proves that the distance we ...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
In this paper we propose a complete axiomatization of the bisimilarity distance of Desharnais et al....
Abstract. This paper presents a library for exactly computing the bisim-ilarity Kantorovich-based ps...
We propose a distance between continuous-time Markov chains (CTMCs) and studythe problem of computin...
Abstract. We propose a distance between continuous-time Markov chains (CTMCs) and study the problem ...
Abstract. This paper proposes an algorithm for exact computation of bisimilarity distances between d...
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...
Behavioural equivalences like probabilistic bisimilarity rely on the transition probabilities and, a...
We propose polynomial-time algorithms to minimise labelled Markov chains whose transition probabilit...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
We address the behavioral metric-based approximate minimization problem of Markov Chains (MCs), i.e....
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
In this paper we propose a complete axiomatization of the bisimilarity distance of Desharnais et al....
Abstract. This paper presents a library for exactly computing the bisim-ilarity Kantorovich-based ps...
We propose a distance between continuous-time Markov chains (CTMCs) and studythe problem of computin...
Abstract. We propose a distance between continuous-time Markov chains (CTMCs) and study the problem ...
Abstract. This paper proposes an algorithm for exact computation of bisimilarity distances between d...
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...
Behavioural equivalences like probabilistic bisimilarity rely on the transition probabilities and, a...
We propose polynomial-time algorithms to minimise labelled Markov chains whose transition probabilit...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
We address the behavioral metric-based approximate minimization problem of Markov Chains (MCs), i.e....
This article improves the time bound for calculating the weak/branching bisimulation minimisation qu...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
The probabilistic bisimilarity distance of Deng et al. has been proposed as a robust quantitative ge...
In this paper we propose a complete axiomatization of the bisimilarity distance of Desharnais et al....
Abstract. This paper presents a library for exactly computing the bisim-ilarity Kantorovich-based ps...