Deviance Information Criteria for Model Selection in Approximate Bayesian Computation

Approximate Bayesian computation (ABC) is a class of algorithmic methods in Bayesian inference using statistical summaries and computer simulations. ABC has become popular in evolutionary genetics and in other branches of biology. However, model selection under ABC algorithms has been a subject of i...

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Bibliographic Details
Published inStatistical applications in genetics and molecular biology Vol. 10; no. 1; pp. 1 - 25
Main Authors Francois, Olivier, Laval, Guillaume
Format Journal Article
LanguageEnglish
Published De Gruyter 12.07.2011
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Summary:Approximate Bayesian computation (ABC) is a class of algorithmic methods in Bayesian inference using statistical summaries and computer simulations. ABC has become popular in evolutionary genetics and in other branches of biology. However, model selection under ABC algorithms has been a subject of intense debate during the recent years. Here, we propose novel approaches to model selection based on posterior predictive distributions and approximations of the deviance. We argue that this framework can settle some contradictions between the computation of model probabilities and posterior predictive checks using ABC posterior distributions. A simulation study and an analysis of a resequencing data set of human DNA show that the deviance criteria lead to sensible results in a number of model choice problems of interest to population geneticists.
Bibliography:ark:/67375/QT4-RHM2BWHM-8
ArticleID:1544-6115.1678
istex:86CEEDB8911745089D0F541ADD1D3598A7C4EA8D
sagmb.2011.10.1.1678.pdf
ISSN:2194-6302
1544-6115
DOI:10.2202/1544-6115.1678