arXiv Analytics

Sign in

arXiv:2007.11390 [math.PR]AbstractReferencesReviewsResources

The asymptotic tails of limit distributions of continuous time Markov chains

Chuang Xu, Mads Christian Hansen, Carsten Wiuf

Published 2020-07-22Version 1

This paper investigates tail asymptotics of stationary distributions and quasi-stationary distributions of continuous-time Markov chains on a subset of the non-negative integers. A new identity for stationary measures is established. In particular, for continuous-time Markov chains with asymptotic power-law transition rates, tail asymptotics for stationary distributions are classified into three types by three easily computable parameters: (i) Conley-Maxwell-Poisson distributions (light-tailed), (ii) exponential-tailed distributions, and (iii) heavy-tailed distributions. Similar results are derived for quasi-stationary distributions. The approach to establish tail asymptotics is different from the classical semimartingale approach. We apply our results to biochemical reaction networks (modeled as continuous-time Markov chains), a general single-cell stochastic gene expression model, an extended class of branching processes, and stochastic population processes with bursty reproduction, none of which are birth-death processes.

Related articles: Most relevant | Search more
arXiv:1611.01254 [math.PR] (Published 2016-11-04)
Perturbations of continuous-time Markov chains
arXiv:1909.12825 [math.PR] (Published 2019-09-27)
Dynamics of continuous time Markov chains with applications to stochastic reaction networks
arXiv:1412.5856 [math.PR] (Published 2014-12-18)
A Comment on the Book "Continuous-Time Markov Chains" by W.J. Anderson