2019
DOI: 10.1214/18-aap1457
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Mixing time estimation in reversible Markov chains from a single sample path

Abstract: The spectral gap γ⋆ of a finite, ergodic, and reversible Markov chain is an important parameter measuring the asymptotic rate of convergence. In applications, the transition matrix P may be unknown, yet one sample of the chain up to a fixed time n may be observed. We consider here the problem of estimating γ⋆ from this data. Let π be the stationary distribution of P , and π⋆ = minx π(x). We show that if n =Õ 1 γ⋆π⋆ , then γ can be estimated to within multiplicative constants with high probability. When π is un… Show more

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Cited by 23 publications
(44 citation statements)
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References 47 publications
(68 reference statements)
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“…Furthermore, this theorem allows γ to approach to 1 as n increases, so long as s (1 + γ)/(1 − γ) · log d/n → 0. Even though the spectral gap of the Markov chain is difficult to accurately compute in practice (Hsu, Kontorovich and Szepesvári, 2015), Theorem 1 also apply if one replaces γ with an inaccurate overestimate γ ′ ≥ γ.…”
Section: Assumptions and Theoremsmentioning
confidence: 99%
“…Furthermore, this theorem allows γ to approach to 1 as n increases, so long as s (1 + γ)/(1 − γ) · log d/n → 0. Even though the spectral gap of the Markov chain is difficult to accurately compute in practice (Hsu, Kontorovich and Szepesvári, 2015), Theorem 1 also apply if one replaces γ with an inaccurate overestimate γ ′ ≥ γ.…”
Section: Assumptions and Theoremsmentioning
confidence: 99%
“…Their method requires time O(n + |Ω| 3 ) and space O(|Ω| 2 ), and is hence mainly adapted to state spaces of moderate size. Our contribution is therefore complementary to [4], which is mainly concerned with statistical efficiency for moderate Ω while we are interested computationally efficient approaches for large Ω.…”
Section: Black-box Methodsmentioning
confidence: 99%
“…One is not allowed to choose the starting state X 0 . This is the model considered in [4]. Furthermore, since a sample path of length n can be generated by n calls to NextState, estimation in the USP model is more arduous than in the RTF model.…”
Section: The Unique Sample Path (Usp) Modelmentioning
confidence: 99%
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