We consider the parallel computation of the stationary probability distribution vector of ergodic Markov chains with large state spaces by preconditioned Krylov subspace methods. The parallel preconditioner is obtained as an explicit approximation, in factorized form, of a particular generalized inverse of the generator matrix of the Markov process. Graph partitioning is used to parallelize the whole algorithm, resulting in a two-level method. Conditions that guarantee the existence of the preconditioner are given, and the results of a parallel implementation are presented. Our results indicate that this method is well suited for problems in which the generator matrix can be explicitly formed and stored. © 2001 IMACS. Published by Elsevier ...
The paper presents a class of numerical methods to compute the stationary distribution of Markov cha...
In recent years, parallel processing has become widely available to researchers. It can be applied i...
A method to bound the steady-state solution of large Markov chains is presented. It integrates the c...
Abstract. We consider preconditioned Krylov subspace methods for computing the stationary probabilit...
For an n-state, homogeneous, ergodic Markov chain with a transition matrix T, its stationary distrib...
This paper describes and compares several methods for computing stationary probability distributions...
Krylov subspace techniques have been shown to yield robust methods for the numerical computation of ...
Krylov subspace techniques have been shown to yield robust methods for the numerical computation of ...
A parallel block projection method is used to approximate the stationary vector of a finite Markov c...
Kronecker structured representations are used to cope with the state space explosion problem in Mark...
Stochastic performance models provide a formal way of capturing and analysing the complex dynamic be...
Purpose – Markov chains and queuing theory are widely used analysis, optimization and decision-makin...
Bibliography: leaves 88-91.This thesis examines how parallel and distributed algorithms can increase...
We present new algorithms for the solution of large structured Markov models whose infinitesimal gen...
Abstract: We present a new algorithm for computing the solution of large Markov chain models whose g...
The paper presents a class of numerical methods to compute the stationary distribution of Markov cha...
In recent years, parallel processing has become widely available to researchers. It can be applied i...
A method to bound the steady-state solution of large Markov chains is presented. It integrates the c...
Abstract. We consider preconditioned Krylov subspace methods for computing the stationary probabilit...
For an n-state, homogeneous, ergodic Markov chain with a transition matrix T, its stationary distrib...
This paper describes and compares several methods for computing stationary probability distributions...
Krylov subspace techniques have been shown to yield robust methods for the numerical computation of ...
Krylov subspace techniques have been shown to yield robust methods for the numerical computation of ...
A parallel block projection method is used to approximate the stationary vector of a finite Markov c...
Kronecker structured representations are used to cope with the state space explosion problem in Mark...
Stochastic performance models provide a formal way of capturing and analysing the complex dynamic be...
Purpose – Markov chains and queuing theory are widely used analysis, optimization and decision-makin...
Bibliography: leaves 88-91.This thesis examines how parallel and distributed algorithms can increase...
We present new algorithms for the solution of large structured Markov models whose infinitesimal gen...
Abstract: We present a new algorithm for computing the solution of large Markov chain models whose g...
The paper presents a class of numerical methods to compute the stationary distribution of Markov cha...
In recent years, parallel processing has become widely available to researchers. It can be applied i...
A method to bound the steady-state solution of large Markov chains is presented. It integrates the c...