Stability of Markovian processes I: criteria for discrete-time Chains
- 1 September 1992
- journal article
- research article
- Published by Cambridge University Press (CUP) in Advances in Applied Probability
- Vol. 24 (03) , 542-574
- https://doi.org/10.1017/s000186780002440x
Abstract
In this paper we connect various topological and probabilistic forms of stability for discrete-time Markov chains. These include tightness on the one hand and Harris recurrence and ergodicity on the other. We show that these concepts of stability are largely equivalent for a major class of chains (chains with continuous components), or if the state space has a sufficiently rich class of appropriate sets (‘petite sets'). We use a discrete formulation of Dynkin's formula to establish unified criteria for these stability concepts, through bounding of moments of first entrance times to petite sets. This gives a generalization of Lyapunov–Foster criteria for the various stability conditions to hold. Under these criteria, ergodic theorems are shown to be valid even in the non-irreducible case. These results allow a more general test function approach for determining rates of convergence of the underlying distributions of a Markov chain, and provide strong mixing results and new versions of the central limit theorem and the law of the iterated logarithm.Keywords
This publication has 15 references indexed in Scilit:
- Asymptotic Behavior of Stochastic Systems Possessing Markovian RealizationsSIAM Journal on Control and Optimization, 1991
- Ergodic Theorems for Discrete Time Stochastic Systems Using a Stochastic Lyapunov FunctionSIAM Journal on Control and Optimization, 1989
- A note on the geometric ergodicity of a Markov chainAdvances in Applied Probability, 1989
- Mixing properties of harris chains and autoregressive processesJournal of Applied Probability, 1986
- A new approach to the limit theory of recurrent Markov chainsTransactions of the American Mathematical Society, 1978
- Criteria for classifying general Markov chainsAdvances in Applied Probability, 1976
- R-theory for Markov chains on a topological state Space. IIProbability Theory and Related Fields, 1976
- Sufficient conditions for ergodicity and recurrence of Markov chains on a general state spaceStochastic Processes and their Applications, 1975
- A Uniform Theory for Sums of Markov Chain Transition ProbabilitiesThe Annals of Probability, 1975
- On the Stochastic Matrices Associated with Certain Queuing ProcessesThe Annals of Mathematical Statistics, 1953