Heavy-tailed asymptotics of stationary probability vectors of markov chains of GI/G/1

Citation
Li, Quan-lin et Q. Zhao, Yiqiang, Heavy-tailed asymptotics of stationary probability vectors of markov chains of GI/G/1, Advances in applied probability , 37(1), 2005, pp. 482-509
ISSN journal
00018678
Volume
37
Issue
1
Year of publication
2005
Pages
482 - 509
Database
ACNP
SICI code
Abstract
In this paper, we provide a novel approach to studying the heavy-tailed asymptotics of the stationary probability vector of a Markov chain of GI/G/1 type, whose transition matrix is constructed from two matrix sequences referred to as a boundary matrix sequence and a repeating matrix sequence, respectively. We first provide a necessary and sufficient condition under which the stationary probability vector is heavy tailed. Then we derive the long-tailed asymptotics of the R-measure in terms of the RG-factorization of the repeating matrix sequence, and a Wiener-Hopf equation for the boundary matrix sequence. Based on this, we are able to provide a detailed analysis of the subexponential asymptotics of the stationary probability vector.