When dealing with Bayesian inference the choice of the prior often remains a debatable question. Empirical Bayes methods offer a data-driven solution to this problem by estimating the prior itself from an ensemble of data. In the nonparametric case, the maximum likelihood estimate is known to overfit the data, an issue that is commonly tackled by regularization. However, the majority of regularizations are ad hoc choices which lack invariance under reparametrization of the model and result in inconsistent estimates for equivalent models. We introduce a nonparametric, transformation-invariant estimator for the prior distribution. Being defined in terms of the missing information similar to the reference prior, it can be seen as an extension ...
Bayesian inference is attractive for its coherence and good frequentist properties. However, eliciti...
Bayesian inference is attractive for its internal coherence and for often having good frequentist pr...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
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...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
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 for its internal coherence and for often having good frequentist pr...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...
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...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
The performance of nonparametric estimators is heavily dependent on a bandwidth parameter. In nonpar...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
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 for its internal coherence and for often having good frequentist pr...
Prior specification for nonparametric Bayesian inference involves the difficult task of quan-tifying...