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Estimating standard errors for importance sampling estimators with multiple Markov chains
TL;DR: In this paper, the authors consider generalized importance sampling estimators where samples from more than one probability distribution are combined, and show that the central limit theorem holds for the generalized estimators.
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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(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.
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Citations
•Posted Content
Effective Reparameterized Importance Sampling for Spatial Generalized Linear Mixed Models with Parametric Links
Evangelos Evangelou,Vivekananda Roy +1 more
- 13 Mar 2018
TL;DR: A generalized importance sampling (GIS) estimator based on multiple Markov chains for an empirical Bayes analysis of SGLMMs and a new method based on Laplace approximation for choosing the multiple importance densities in the GIS estimator.
1
Markov chain Monte Carlo importance samplers for Bayesian models with intractable likelihoods
Jordan Franks
- 11 Apr 2019
TL;DR: In this paper, the authors consider the efficient use of an approximation within Markov chain Monte Carlo (MCMC), with subsequent importance sampling (IS) correction of the Markov Chain inexact output, leading to asymptotically exact inference.
1
Efficient estimation and prediction for the Bayesian binary spatial model with flexible link functions
TL;DR: A Bayesian spatial robit model for spatially dependent binomial data is introduced and the approach is doing as well as the classical models for predicting the disease severity for a root disease, as the probit link is shown to be appropriate.
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Sean P. Meyn,Richard L. Tweedie +1 more
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Peter J. Diggle,Jonathan A. Tawn,Rana Moyeed +2 more
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Bayesian Variable Selection in Linear Regression
TL;DR: In this article, the authors proposed a Bayesian approach to the selection of subsets of predictor variables in a linear regression model for the prediction of a dependent variable. But their method is not fully Bayesian, however, because the ultimate choice of prior distribution from this family is affected by the data.
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