Nonasymptotic approach to Bayesian semiparametric inference


Cite item

Full Text

Open Access Open Access
Restricted Access Access granted
Restricted Access Subscription Access

Abstract

The classical semiparametric Bernstein–von Mises (BvM) results is reconsidered in a non-classical setup allowing finite samples and model misspecication. 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 target parameter and in the dimension of sieve approximation of the nuisance parameter. This helps to identify the so called critical dimension pn of the sieve approximation of the full parameter for which the BvM result is applicable. If the bias induced by sieve approximation is small and dimension of sieve approximation is smaller then critical dimension than the BvM result is valid. In the important i.i.d. and regression cases, we show that the condition “pn2q/n is small”, where q is the dimension of the target parameter and n is the sample size, leads to the BvM result under general assumptions on the model.

About the authors

M. E. Panov

Institute for Information Transmission Problems; Moscow Institute of Physics and Technology; Datadvance Company

Author for correspondence.
Email: panov.maxim@gmail.com
Russian Federation, Bol’shoi Karetnyi per. 19/1, Moscow, 127994; Institutskii per. 9, Dolgoprudnyi, Moscow oblast, 141700; Moscow


Copyright (c) 2016 Pleiades Publishing, Ltd.

This website uses cookies

You consent to our cookies if you continue to use our website.

About Cookies