AbstractLet P be the transition matrix of a nearly uncoupled Markov chain. The states can be grouped into aggregates such that P has the block form P=(Pij)i,j=1k, where Pii is square and Pij is small for i≠j. Let πT be the stationary distribution partitioned conformally as πT=(π1T,…,πkT). In this paper we bound the relative error in each aggregate distribution πiT caused by small relative perturbations in Pij. The error bounds demonstrate that nearly uncoupled Markov chains usually lead to well-conditioned problems in the sense of blockwise relative error. As an application, we show that with appropriate stopping criteria, iterative aggregation/disaggregation algorithms will achieve such structured backward errors and compute each aggregate...
A block Markov chain is a Markov chain whose state space can be partitioned into a finite number of ...
A block Markov chain is a Markov chain whose state space can be partitioned into a finite number of ...
AbstractThe topic of the present paper has been motivated by a recent computational approach to iden...
The standard perturbation theory for linear equations states that nearly uncoupled Markov chains(NUM...
AbstractLet P be the transition matrix of a nearly uncoupled Markov chain. The states can be grouped...
A discrete-time Markov chain on a state space S is a sequence of random variables X = fx0; x1; : : ...
A discrete-time Markov chain on a state space S is a sequence of random variables X = fx0; x1; : : ...
In this thesis, the theory of lumpability (strong lumpability and weak lumpability) of irreducible f...
Singular perturbation techniques allow the derivation of an aggregate model whose solution is asympt...
AbstractO'Cinneide presented an entrywise perturbation theorem for Markov chains. The error bound he...
Markov chains are frequently used to model complex stochastic systems. Unfortunately the state space...
Abstract. For many Markov chains of practical interest, the invariant distri-bution is extremely sen...
A discrete-time Markov chain on a state space S is a sequence of random variables X = fx0; x1; : : ...
Nearly uncoupled Markov chains (aka nearly completely decomposable Markov chains) arise in a variety...
AbstractThe topic of the present paper has been motivated by a recent computational approach to iden...
A block Markov chain is a Markov chain whose state space can be partitioned into a finite number of ...
A block Markov chain is a Markov chain whose state space can be partitioned into a finite number of ...
AbstractThe topic of the present paper has been motivated by a recent computational approach to iden...
The standard perturbation theory for linear equations states that nearly uncoupled Markov chains(NUM...
AbstractLet P be the transition matrix of a nearly uncoupled Markov chain. The states can be grouped...
A discrete-time Markov chain on a state space S is a sequence of random variables X = fx0; x1; : : ...
A discrete-time Markov chain on a state space S is a sequence of random variables X = fx0; x1; : : ...
In this thesis, the theory of lumpability (strong lumpability and weak lumpability) of irreducible f...
Singular perturbation techniques allow the derivation of an aggregate model whose solution is asympt...
AbstractO'Cinneide presented an entrywise perturbation theorem for Markov chains. The error bound he...
Markov chains are frequently used to model complex stochastic systems. Unfortunately the state space...
Abstract. For many Markov chains of practical interest, the invariant distri-bution is extremely sen...
A discrete-time Markov chain on a state space S is a sequence of random variables X = fx0; x1; : : ...
Nearly uncoupled Markov chains (aka nearly completely decomposable Markov chains) arise in a variety...
AbstractThe topic of the present paper has been motivated by a recent computational approach to iden...
A block Markov chain is a Markov chain whose state space can be partitioned into a finite number of ...
A block Markov chain is a Markov chain whose state space can be partitioned into a finite number of ...
AbstractThe topic of the present paper has been motivated by a recent computational approach to iden...