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Finite Sample Bernstein -- von Mises Theorem for Semiparametric Problems (1310.7796v2)

Published 29 Oct 2013 in math.ST and stat.TH

Abstract: The classical parametric and semiparametric Bernstein -- von Mises (BvM) results are reconsidered in a non-classical setup allowing finite samples and model misspecification. In the case of a finite dimensional nuisance parameter we obtain an upper bound on the error of Gaussian approximation of the posterior distribution for the target parameter which is explicit in the dimension of the nuisance and target parameters. This helps to identify the so called \emph{critical dimension} $ p $ of the full parameter for which the BvM result is applicable. In the important i.i.d. case, we show that the condition "$ p{3} / n $ is small" is sufficient for BvM result to be valid under general assumptions on the model. We also provide an example of a model with the phase transition effect: the statement of the BvM theorem fails when the dimension $ p $ approaches $ n{1/3} $. The results are extended to the case of infinite dimensional parameters with the nuisance parameter from a Sobolev class. In particular we show near normality of the posterior if the smoothness parameter $s$ exceeds 3/2.

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