1972
DOI: 10.1214/aoms/1177692411
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On Two Recent Papers on Ergodicity in Nonhomogeneous Markov Chains

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Cited by 31 publications
(34 citation statements)
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“…For nonhomogeneous Markov processes with countable state space, investigation of the general conditions of weak ergodicity leads to the definition of a special subclass of regular matrices. In many papers (see for example, [6,11,15,18]) the weak ergodicity of nonhomogeneous Markov process are given in terms of Dobrushin's ergodicity coefficient [1]. In general case, one may consider several kinds of convergence [10].…”
Section: Introductionmentioning
confidence: 99%
“…For nonhomogeneous Markov processes with countable state space, investigation of the general conditions of weak ergodicity leads to the definition of a special subclass of regular matrices. In many papers (see for example, [6,11,15,18]) the weak ergodicity of nonhomogeneous Markov process are given in terms of Dobrushin's ergodicity coefficient [1]. In general case, one may consider several kinds of convergence [10].…”
Section: Introductionmentioning
confidence: 99%
“…Corollary 3.9 (sections 3.1 and 4.3 in [85], pages 1733-1734 in [41]). If S ∈ R n×n is a stochastic matrix, then τ 1 (S) = 1 − min ij n k=1 min{s ik , s jk }.…”
Section: Explicit Expressionsmentioning
confidence: 99%
“…in the case if Σ is a compact set and the map P (u) = P u : Σ → L is continuous. Then (we refer to [5,6] for the properties of Dobrushin's coefficient δ(P )): It follows from the definition and (3.1) that δ(P w ) ≤ M(1 − δ) |w|/r , for any w ∈ Σ * and some M > 0. Maass and Sontag used a strong Doeblin's condition to prove the computational power of noisy neural networks [8].…”
Section: The Reduction Lemma and Quasi-compact Mcsmentioning
confidence: 99%