This paper presents an improved version of a componentwise bounding algorithm for the state probability vector of nearly completely decomposable Markov chains, and on an application it provides the first numerical results with the type of algorithm discussed. The given two-level algorithm uses aggregation and stochastic comparison with the strong stochastic (st) order. In order to improve accuracy, it employs reordering of states and a better componentwise probability bounding algorithm given st upper- and lower-bounding probability vectors. Results in sparse storage show that there are cases in which the given algorithm proves to be useful. © 2004 Elsevier B.V. All rights reserved
In this paper, we address the problem of reduced-complexity estimation of general large-scale hidden...
Experimental results for large, sparse Markov chains, especially the ill-conditioned nearly complete...
Numerical methods for solving Markov chains are in general ine??cient if the state space of the chai...
Cataloged from PDF version of article.This paper presents an improved version of a componentwise bou...
In this paper, it is shown that nearly completely decomposable (NCD) Markov chains are quasi-lumpabl...
This paper provides a systematic method of obtaining reduced-complexity approximations to aggregate ...
AbstractWe analyze transient and stationary behaviors of multidimensional Markov chains defined on l...
In this paper, we address the problem of reduced-complexity estimation of general large-scale hidden...
Recently the Multi-Level algorithm was introduced as a general purpose solver for the solution of st...
The problem of computing bounds on the conditional steady-state probability vector of a subset of st...
International audienceSolving Markov chains is, in general, difficult if the state space of the chai...
Stochastic automata networks (SANs) have been developed and used in the last fifteen years as a mode...
In this paper, we address the problem of complexity reduction in state estimation of Poisson process...
This paper highlights an algorithm that computes, if possible, a nearly completely decomposable (NCD...
A discrete-time Markov chain on a state space S is a sequence of random variables X = fx0; x1; : : ...
In this paper, we address the problem of reduced-complexity estimation of general large-scale hidden...
Experimental results for large, sparse Markov chains, especially the ill-conditioned nearly complete...
Numerical methods for solving Markov chains are in general ine??cient if the state space of the chai...
Cataloged from PDF version of article.This paper presents an improved version of a componentwise bou...
In this paper, it is shown that nearly completely decomposable (NCD) Markov chains are quasi-lumpabl...
This paper provides a systematic method of obtaining reduced-complexity approximations to aggregate ...
AbstractWe analyze transient and stationary behaviors of multidimensional Markov chains defined on l...
In this paper, we address the problem of reduced-complexity estimation of general large-scale hidden...
Recently the Multi-Level algorithm was introduced as a general purpose solver for the solution of st...
The problem of computing bounds on the conditional steady-state probability vector of a subset of st...
International audienceSolving Markov chains is, in general, difficult if the state space of the chai...
Stochastic automata networks (SANs) have been developed and used in the last fifteen years as a mode...
In this paper, we address the problem of complexity reduction in state estimation of Poisson process...
This paper highlights an algorithm that computes, if possible, a nearly completely decomposable (NCD...
A discrete-time Markov chain on a state space S is a sequence of random variables X = fx0; x1; : : ...
In this paper, we address the problem of reduced-complexity estimation of general large-scale hidden...
Experimental results for large, sparse Markov chains, especially the ill-conditioned nearly complete...
Numerical methods for solving Markov chains are in general ine??cient if the state space of the chai...