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Rigorous confidence bounds for MCMC under a geometric drift condition

14 August 2009
Krzysztof Latuszynski
Wojciech Niemiro
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Abstract

We assume a drift condition towards a small set and bound the mean square error of estimators obtained by taking averages along a single trajectory of a Markov chain Monte Carlo algorithm. We use these bounds to construct fixed-width nonasymptotic confidence intervals. For a possibly unbounded function f:\stany→R,f:\stany \to R,f:\stany→R, let I=∫\stanyf(x)π(x)dxI=\int_{\stany} f(x) \pi(x) dxI=∫\stany​f(x)π(x)dx be the value of interest and I^t,n=(1/n)∑i=tt+n−1f(Xi)\hat{I}_{t,n}=(1/n)\sum_{i=t}^{t+n-1}f(X_i)I^t,n​=(1/n)∑i=tt+n−1​f(Xi​) its MCMC estimate. Precisely, we derive lower bounds for the length of the trajectory nnn and burn-in time ttt which ensure that P(|\hat{I}_{t,n}-I|\leq \varepsilon)\geq 1-\alpha. The bounds depend only and explicitly on drift parameters, on the V−V-V−norm of f,f,f, where VVV is the drift function and on precision and confidence parameters ε,α.\varepsilon, \alpha.ε,α. Next we analyse an MCMC estimator based on the median of multiple shorter runs that allows for sharper bounds for the required total simulation cost. In particular the methodology can be applied for computing Bayesian estimators in practically relevant models. We illustrate our bounds numerically in a simple example.

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