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arxiv: 1106.4739 · v3 · pith:KHKY4COGnew · submitted 2011-06-23 · 📊 stat.ME · math.ST· stat.CO· stat.TH

Nonasymptotic bounds on the estimation error of MCMC algorithms

classification 📊 stat.ME math.STstat.COstat.TH
keywords boundschainsergodicerrorestimationmarkovmathrmmcmc
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We address the problem of upper bounding the mean square error of MCMC estimators. Our analysis is nonasymptotic. We first establish a general result valid for essentially all ergodic Markov chains encountered in Bayesian computation and a possibly unbounded target function $f$. The bound is sharp in the sense that the leading term is exactly $\sigma_{\mathrm {as}}^2(P,f)/n$, where $\sigma_{\mathrm{as}}^2(P,f)$ is the CLT asymptotic variance. Next, we proceed to specific additional assumptions and give explicit computable bounds for geometrically and polynomially ergodic Markov chains under quantitative drift conditions. As a corollary, we provide results on confidence estimation.

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