Bayesian inference is attractive for its internal coherence and for often having good frequentist properties. However, eliciting a honest prior may be difficult and a common practice is to take an empirical Bayes approach using some estimate of the prior hyperparameters. Although not rigorous, the underlying idea is that, for a sufficiently large sample size, empirical Bayes methods should lead to similar inferential answers as a proper Bayesian inference. However, precise mathematical results on this asymptotic agreement seem to be missing. In this work, we give results in terms of merging of Bayesian and empirical Bayes posterior distributions. We study two notions of merging: Bayesian weak merging and frequentist merging in total variati...
We provide conditions on the statistical model and the prior probability law to derive contraction r...
This thesis examines a modified empirical Bayes decision problem in which the a priori distribution ...
We provide conditions on the statistical model and the prior probability law to derive contraction r...
Bayesian inference is attractive for its internal coherence and for often having good frequentist pr...
Bayesian inference is attractive for its internal coherence and for often having good frequentist pr...
Bayesian inference is attractive for its coherence and good frequentist properties. However, eliciti...
Bayesian inference is attractive for its coherence and good frequentist properties. However, eliciti...
Bayesian inference is attractive for its coherence and good frequentist properties. However, eliciti...
Bayesian inference is attractive due to its internal coherence and for often having good fre-quentis...
Empirical Bayes methods are often thought of as a bridge between classical and Bayesian inference. ...
Empirical Bayes methods are often thought of as a bridge between classical and Bayesian inference. ...
Empirical Bayes methods are often thought of as a bridge between classical and Bayesian inference. ...
When dealing with Bayesian inference the choice of the prior often remains a debatable question. Emp...
When dealing with Bayesian inference the choice of the prior often remains a debatable question. Emp...
Abstract. The empirical Bayes estimator of the probability of a successful event is deduced from mix...
We provide conditions on the statistical model and the prior probability law to derive contraction r...
This thesis examines a modified empirical Bayes decision problem in which the a priori distribution ...
We provide conditions on the statistical model and the prior probability law to derive contraction r...
Bayesian inference is attractive for its internal coherence and for often having good frequentist pr...
Bayesian inference is attractive for its internal coherence and for often having good frequentist pr...
Bayesian inference is attractive for its coherence and good frequentist properties. However, eliciti...
Bayesian inference is attractive for its coherence and good frequentist properties. However, eliciti...
Bayesian inference is attractive for its coherence and good frequentist properties. However, eliciti...
Bayesian inference is attractive due to its internal coherence and for often having good fre-quentis...
Empirical Bayes methods are often thought of as a bridge between classical and Bayesian inference. ...
Empirical Bayes methods are often thought of as a bridge between classical and Bayesian inference. ...
Empirical Bayes methods are often thought of as a bridge between classical and Bayesian inference. ...
When dealing with Bayesian inference the choice of the prior often remains a debatable question. Emp...
When dealing with Bayesian inference the choice of the prior often remains a debatable question. Emp...
Abstract. The empirical Bayes estimator of the probability of a successful event is deduced from mix...
We provide conditions on the statistical model and the prior probability law to derive contraction r...
This thesis examines a modified empirical Bayes decision problem in which the a priori distribution ...
We provide conditions on the statistical model and the prior probability law to derive contraction r...