The asymptotic tails of limit distributions of continuous-time Markov chains

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This paper investigates tail asymptotics of stationary distributions and quasi-stationary distributions (QSDs) of continuous-time Markov chains on subsets of the non-negative integers. Based on the so-called flux-balance equation, we establish identities for stationary measures and QSDs, which we use to derive tail asymptotics. In particular, for continuous-time Markov chains with asymptotic power law transition rates, tail asymptotics for stationary distributions and QSDs are classified into three types using three easily computable parameters: (i) super-exponential distributions, (ii) exponential-tailed distributions, and (iii) sub-exponential distributions. Our approach to establish tail asymptotics of stationary distributions is different from the classical semimartingale approach, and we do not impose ergodicity or moment bound conditions. In particular, the results also hold for explosive Markov chains, for which multiple stationary distributions may exist. Furthermore, our results on tail asymptotics of QSDs seem new. We apply our results to biochemical reaction networks, 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. Our approach, together with the identities, easily extends to discrete-time Markov chains.
OriginalsprogEngelsk
TidsskriftAdvances in Applied Probability
Vol/bind56
Udgave nummer2
Sider (fra-til)693–734
ISSN0001-8678
DOI
StatusUdgivet - 2024

Bibliografisk note

Funding Information:
C. X. acknowledges support from the TUM University Foundation and the Alexander von Humboldt Foundation, as well as internal start-up funding from the University of Hawai’i at Mānoa. C. W. acknowledges support from the Novo Nordisk Foundation (Denmark), grant NNF19OC0058354.

Publisher Copyright:
© The Author(s), 2023. Published by Cambridge University Press on behalf of Applied Probability Trust.

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