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arxiv: 1102.2171 · v2 · pith:G5P72NZ6new · submitted 2011-02-10 · 🧮 math.PR · stat.CO

CLTs and asymptotic variance of time-sampled Markov chains

classification 🧮 math.PR stat.CO
keywords markovasymptotictime-sampledvariancechainskerneltransitionaccording
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For a Markov transition kernel $P$ and a probability distribution $ \mu$ on nonnegative integers, a time-sampled Markov chain evolves according to the transition kernel $P_{\mu} = \sum_k \mu(k)P^k.$ In this note we obtain CLT conditions for time-sampled Markov chains and derive a spectral formula for the asymptotic variance. Using these results we compare efficiency of Barker's and Metropolis algorithms in terms of asymptotic variance.

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