Open Access
February 2015 Bayesian Indirect Inference Using a Parametric Auxiliary Model
Christopher C. Drovandi, Anthony N. Pettitt, Anthony Lee
Statist. Sci. 30(1): 72-95 (February 2015). DOI: 10.1214/14-STS498

Abstract

Indirect inference (II) is a methodology for estimating the parameters of an intractable (generative) model on the basis of an alternative parametric (auxiliary) model that is both analytically and computationally easier to deal with. Such an approach has been well explored in the classical literature but has received substantially less attention in the Bayesian paradigm. The purpose of this paper is to compare and contrast a collection of what we call parametric Bayesian indirect inference (pBII) methods. One class of pBII methods uses approximate Bayesian computation (referred to here as ABC II) where the summary statistic is formed on the basis of the auxiliary model, using ideas from II. Another approach proposed in the literature, referred to here as parametric Bayesian indirect likelihood (pBIL), uses the auxiliary likelihood as a replacement to the intractable likelihood. We show that pBIL is a fundamentally different approach to ABC II. We devise new theoretical results for pBIL to give extra insights into its behaviour and also its differences with ABC II. Furthermore, we examine in more detail the assumptions required to use each pBII method. The results, insights and comparisons developed in this paper are illustrated on simple examples and two other substantive applications. The first of the substantive examples involves performing inference for complex quantile distributions based on simulated data while the second is for estimating the parameters of a trivariate stochastic process describing the evolution of macroparasites within a host based on real data. We create a novel framework called Bayesian indirect likelihood (BIL) that encompasses pBII as well as general ABC methods so that the connections between the methods can be established.

Citation

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Christopher C. Drovandi. Anthony N. Pettitt. Anthony Lee. "Bayesian Indirect Inference Using a Parametric Auxiliary Model." Statist. Sci. 30 (1) 72 - 95, February 2015. https://doi.org/10.1214/14-STS498

Information

Published: February 2015
First available in Project Euclid: 4 March 2015

zbMATH: 1332.62088
MathSciNet: MR3317755
Digital Object Identifier: 10.1214/14-STS498

Keywords: Approximate Bayesian Computation , likelihood-free methods , Markov jump processes , quantile distributions , simulated likelihood

Rights: Copyright © 2015 Institute of Mathematical Statistics

Vol.30 • No. 1 • February 2015
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