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Taylor series expansions for stationary Markov chains
Part of:
Markov processes
Published online by Cambridge University Press: 01 July 2016
Abstract
We study Taylor series expansions of stationary characteristics of general-state-space Markov chains. The elements of the Taylor series are explicitly calculated and a lower bound for the radius of convergence of the Taylor series is established. The analysis provided in this paper applies to the case where the stationary characteristic is given through an unbounded sample performance function such as the second moment of the stationary waiting time in a queueing system.
MSC classification
- Type
- General Applied Probability
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- Copyright © Applied Probability Trust 2003
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