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MICHIGAN STATE UNIVERSITY
Department of Statistics and Probability
COLLOQUIUM
Vivekananda Roy
Iowa State University
Estimating standard errors for importance sampling
estimators with multiple Markov chains
Tuesday, March 22, 2016
10:20 a.m. - 11:10 am
Refreshments 10:00 am
C405 Wells Hall
Abstract
The naive importance sampling estimator, based on samples from a single importance density, can be
numerically unstable. Instead, we consider generalized importance sampling estimators where samples
from more than one probability distribution are combined. We study this problem in the Markov chain
Monte Carlo context, where independent samples are replaced with Markov chain samples. If the chains
converge to their respective target distributions at a polynomial rate, then under two finite moment
conditions, we show a central limit theorem holds for the generalized estimators. Further, we develop
an easy to implement method to calculate valid asymptotic standard errors based on batch means. We
also provide a batch means estimator for calculating asymptotically valid standard errors of Geyer's
(1994) reverse logistic estimator. We illustrate the method using a Bayesian variable selection procedure
in linear regression. In particular, the generalized importance sampling estimator is used to perform
empirical Bayes variable selection and the batch means estimator is used to obtain standard errors in a
high-dimensional setting where current methods are not applicable.
To request an interpreter or other accommodations for people with disabilities, please call the
Department of Statistics and Probability at 517-355-9589.