In this paper we deal with iterative numerical methods to solve linear systems arising in continuous-time Markov chain (CTMC) models. We develop an algorithm to dynamically tune the relaxation parameter of the successive over-relaxation method. We give a sufficient condition for the Gauss-Seidel method to converge when computing the steady-state probability vector of a finite irreducible CTMC, an a suffient condition for the Generalized Minimal Residual projection method not to converge to the trivial solution 0 when computing that vector. Finally, we compare several splitting-based iterative methods an a variant of the Generalized Minimal Residual projection method
Markov chains have always constituted an efficient tool to model discrete systems. Many performance...
This paper illustrates the current state of development of an algorithm for the steady state soluti...
This paper describes and compares several methods for computing stationary probability distributions...
In this paper we deal with iterative numerical methods to solve linear systems arising in continuous...
Except for formatting details, this version matches exactly the version published with the same titl...
Iterative numerical methods are an important ingredient for the solution of continuous time Markov d...
Abstract: Two main approximation methods for steady-state analysis of Markov chains are introduced: ...
Abstract. Continuous time Markov Chains (CTMCs) are a convenient mathematical model for a broad rang...
Continuous time Markov Chains (CTMCs) are a convenient mathematical model for a broad range of natur...
This paper deals with monotone iterative methods for the computation of the steady-state probability...
AbstractMarkov chains have always constituted an efficient tool to model discrete systems. Many perf...
In this paper we consider the problem of numerical computation of the mean time to failure (MTTF) in...
Abstract. Markovian models have been used for about a century now for the evaluation of the performa...
AbstractThis paper deals with monotone iterative methods for the computation of the steady-state pro...
Reliability and dependability modeling can be employed during many stages of analysis of a computing...
Markov chains have always constituted an efficient tool to model discrete systems. Many performance...
This paper illustrates the current state of development of an algorithm for the steady state soluti...
This paper describes and compares several methods for computing stationary probability distributions...
In this paper we deal with iterative numerical methods to solve linear systems arising in continuous...
Except for formatting details, this version matches exactly the version published with the same titl...
Iterative numerical methods are an important ingredient for the solution of continuous time Markov d...
Abstract: Two main approximation methods for steady-state analysis of Markov chains are introduced: ...
Abstract. Continuous time Markov Chains (CTMCs) are a convenient mathematical model for a broad rang...
Continuous time Markov Chains (CTMCs) are a convenient mathematical model for a broad range of natur...
This paper deals with monotone iterative methods for the computation of the steady-state probability...
AbstractMarkov chains have always constituted an efficient tool to model discrete systems. Many perf...
In this paper we consider the problem of numerical computation of the mean time to failure (MTTF) in...
Abstract. Markovian models have been used for about a century now for the evaluation of the performa...
AbstractThis paper deals with monotone iterative methods for the computation of the steady-state pro...
Reliability and dependability modeling can be employed during many stages of analysis of a computing...
Markov chains have always constituted an efficient tool to model discrete systems. Many performance...
This paper illustrates the current state of development of an algorithm for the steady state soluti...
This paper describes and compares several methods for computing stationary probability distributions...