In contrast to a posterior analysis given a particular sampling model, posterior model probabilities in the context of model uncertainty are typically rather sensitive to the specification of the prior. In particular, 'diffuse' priors on model-specific parameters can lead to quite unexpected consequences. Here we focus on the practically relevant situation where we need to entertain a (large) number of sampling models and we have (or wish to use) little or no subjective prior information. We aim at providing an 'automatic' or 'benchmark' prior structure that can be used in such cases. We focus on the normal linear regression model with uncertainty in the choice of regressors. We propose a partly non-informative prior structure related to a ...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
Abstract. The evolution of Bayesian approaches for model uncertainty over the past decade has been r...
We consider the problem of variable selection in linear regression models. Bayesian model averaging ...
Bayesian model averaging attempts to combine parameter estimation and model uncertainty in one coher...
The reference priors, initiated in Bernardo (1979) and further developed in Berger and Bernardo (199...
This article describes the BMS (Bayesian model sampling) package for R that implements Bayesian mode...
We examine the issue of variable selection in linear regression modelling, where we have a potential...
AbstractWe examine the issue of variable selection in linear regression modelling, where we have a p...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
We consider the problem of variable selection in linear regression models. Bayesian model averaging ...
We consider the problem of variable selection in linear regression models. Bayesian model averaging ...
Abstract: We consider nonparametric Bayesian estimation of a probabil-ity density p based on a rando...
We consider the specification of prior distributions for Bayesian model comparison, focusing on regr...
In this article, we present a fully coherent and consistent objective Bayesian analysis of the linea...
This article describes the BMS (Bayesian model sampling) package for R that implements Bayesian mode...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
Abstract. The evolution of Bayesian approaches for model uncertainty over the past decade has been r...
We consider the problem of variable selection in linear regression models. Bayesian model averaging ...
Bayesian model averaging attempts to combine parameter estimation and model uncertainty in one coher...
The reference priors, initiated in Bernardo (1979) and further developed in Berger and Bernardo (199...
This article describes the BMS (Bayesian model sampling) package for R that implements Bayesian mode...
We examine the issue of variable selection in linear regression modelling, where we have a potential...
AbstractWe examine the issue of variable selection in linear regression modelling, where we have a p...
The issue of setting prior distributions on model parameters, or to attribute uncertainty for model ...
We consider the problem of variable selection in linear regression models. Bayesian model averaging ...
We consider the problem of variable selection in linear regression models. Bayesian model averaging ...
Abstract: We consider nonparametric Bayesian estimation of a probabil-ity density p based on a rando...
We consider the specification of prior distributions for Bayesian model comparison, focusing on regr...
In this article, we present a fully coherent and consistent objective Bayesian analysis of the linea...
This article describes the BMS (Bayesian model sampling) package for R that implements Bayesian mode...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
Abstract. The evolution of Bayesian approaches for model uncertainty over the past decade has been r...
We consider the problem of variable selection in linear regression models. Bayesian model averaging ...