Merging and stability for time inhomogeneous finite Markov chains

  • Laurent Saloff-Coste

    Cornell University, Ithaca, United States
  • Jessica Zúñiga

    Stanford University, USA
Merging and stability for time inhomogeneous finite Markov chains cover

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Abstract

We discuss problems posed by the quantitative study of time inhomogeneous Markov chains. The two main notions for our purpose are merging and stability. Merging (also called weak ergodicity) occurs when the chain asymptotically forgets where it started. It is a loss of memory property. Stability relates to the question of whether or not, despite temporary variations, there is a rough shape describing the long time behavior of the chain. For instance, we will discuss an example where the long time behavior is roughly described by a binomial, with temporal variations.