Analyzing Markov Chains using Kronecker Products Analyzing Markov Chains using Kronecker Products
SpringerBriefs in Mathematics

Analyzing Markov Chains using Kronecker Products

Theory and Applications

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Descripción editorial

Kronecker products are used to define the underlying Markov chain (MC) in various modeling formalisms, including compositional Markovian models, hierarchical Markovian models, and stochastic process algebras. The motivation behind using a Kronecker structured representation rather than a flat one is to alleviate the storage requirements associated with the MC. With this approach, systems that are an order of magnitude larger can be analyzed on the same platform. The developments in the solution of such MCs are reviewed from an algebraic point of view and possible areas for further research are indicated with an emphasis on preprocessing using reordering, grouping, and lumping and numerical analysis using block iterative, preconditioned projection, multilevel, decompositional, and matrix analytic methods. Case studies from closed queueing networks and stochastic chemical kinetics are provided to motivate decompositional and matrix analytic methods, respectively.

GÉNERO
Ciencia y naturaleza
PUBLICADO
2012
25 de julio
IDIOMA
EN
Inglés
EXTENSIÓN
95
Páginas
EDITORIAL
Springer New York
VENDEDOR
Springer Nature B.V.
TAMAÑO
9.4
MB
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