Title of article
Expected-posterior prior distributions for model selection
Author/Authors
Berger، James O. نويسنده , , M.Perez، Jose نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2002
Pages
-490
From page
491
To page
0
Abstract
We consider the problem of comparing parametric models using a Bayesian approach.A new method of developing prior distributions for the model parameters is presented, called the expected-posterior prior approach. The idea is to define the priors for all models from a common underlying predictive distribution, in such a way that the resulting priors are amenable to modern Markov chain Monte Carlo computational techniques. The approach has subjective Bayesian and default Bayesian implementations, and overcomes the most significant impediment to Bayesian model selection, that of ensuring that prior distributions for the various models are appropriately compatible.
Keywords
Aliasing , Two-level design , Wordlength pattern , Defining contrast , Factor screening
Journal title
Biometrika
Serial Year
2002
Journal title
Biometrika
Record number
71783
Link To Document