Integral equation solutions as prior distributions for Bayesian model selection

被引:0
|
作者
J. A. Cano
D. Salmerón
C. P. Robert
机构
[1] University of Murcia,Department of Statistics and Operational Research
[2] University of Murcia,Computer Sciences Department
[3] CEREMADE,undefined
[4] Université Paris Dauphine and CREST,undefined
[5] INSEE,undefined
来源
TEST | 2008年 / 17卷
关键词
Bayes factor; Model selection; Integral equations; Intrinsic priors; Expected posterior priors; 62F03; 62F15;
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摘要
In many statistical problems we deal with more than one model. When the prior information on the parameters of the models is vague default priors are typically used. Unfortunately, these priors are usually improper provoking a calibration problem which precludes the comparison of the models. An attempt for solving this difficulty consists in using intrinsic priors, introduced in Berger and Pericchi (1996, The intrinsic Bayes factor for model selection and prediction. J Am Stat Assoc 91:109–122), instead of the original default priors; however, there are situations where the class of intrinsic priors is too large.
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页码:493 / 504
页数:11
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