Model Uncertainty
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Statistics Papers
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Bayes factors
classification and regression trees
model averaging
linear and nonparametric regression
objective prior distributions
reversible jump Markov chain Monte Carlo
variable selection
Statistics and Probability
classification and regression trees
model averaging
linear and nonparametric regression
objective prior distributions
reversible jump Markov chain Monte Carlo
variable selection
Statistics and Probability
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Clyde, Merlise
George, Edward I
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Abstract
The evolution of Bayesian approaches for model uncertainty over the past decade has been remarkable. Catalyzed by advances in methods and technology for posterior computation, the scope of these methods has widened substantially. Major thrusts of these developments have included new methods for semiautomatic prior specification and posterior exploration. To illustrate key aspects of this evolution, the highlights of some of these developments are described.
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2004-01-01
Journal title
Statistical Science