This paper investigates the performance of the predictive distributions of Bayesian models. To overcome the difficulty of evaluating the predictive likelihood, we introduce the concept of expected log-predictive likelihoods for Bayesian models, and propose an estimator of the expected log-predictive likelihood. The estimator is derived by correcting the asymptotic bias of the log-likelihood of the predictive distribution as an estimate of its expected value. We investigate the relationship between the proposed criterion and the traditional information criteria and show that the proposed criterion is a natural extension of the traditional ones. A new model selection criterion and a new model averaging method are then developed, with the weig...
The method of model averaging has become an important tool to deal with model uncertainty, in parti...
This paper considers the problem of forecasting in dynamic factor models using Bayesian model averag...
marginal likelihood estimation In ML model selection we judge models by their ML score and the numbe...
The problem of evaluating the goodness of the predictive distributions devel-oped by the Bayesian mo...
This paper focuses on the problem of variable selection in linear regression models. I briefy revie...
A model selection criterion based on Bayesian predictive densities is derived. Starting with an impr...
Logistic regression is the standard method for assessing predictors of diseases. In logistic regress...
This paper studies the asymptotic relationship between Bayesian model averaging and post-selection f...
AbstractWe examine the issue of variable selection in linear regression modelling, where we have a p...
We extend the standard approach to Bayesian forecast combina-tion by forming the weights for the for...
This paper builds on some recent work by the author and Werner Ploberger (1991, 1994) on the develop...
Abstract. The traditional use of model selection methods in practice is to proceed as if the final s...
The traditional use of model selection methods in practice is to proceed as if the final selected mo...
We examine the issue of variable selection in linear regression modelling, where we have a potential...
When a number of distinct models is available for prediction, choice of a single model can offer uns...
The method of model averaging has become an important tool to deal with model uncertainty, in parti...
This paper considers the problem of forecasting in dynamic factor models using Bayesian model averag...
marginal likelihood estimation In ML model selection we judge models by their ML score and the numbe...
The problem of evaluating the goodness of the predictive distributions devel-oped by the Bayesian mo...
This paper focuses on the problem of variable selection in linear regression models. I briefy revie...
A model selection criterion based on Bayesian predictive densities is derived. Starting with an impr...
Logistic regression is the standard method for assessing predictors of diseases. In logistic regress...
This paper studies the asymptotic relationship between Bayesian model averaging and post-selection f...
AbstractWe examine the issue of variable selection in linear regression modelling, where we have a p...
We extend the standard approach to Bayesian forecast combina-tion by forming the weights for the for...
This paper builds on some recent work by the author and Werner Ploberger (1991, 1994) on the develop...
Abstract. The traditional use of model selection methods in practice is to proceed as if the final s...
The traditional use of model selection methods in practice is to proceed as if the final selected mo...
We examine the issue of variable selection in linear regression modelling, where we have a potential...
When a number of distinct models is available for prediction, choice of a single model can offer uns...
The method of model averaging has become an important tool to deal with model uncertainty, in parti...
This paper considers the problem of forecasting in dynamic factor models using Bayesian model averag...
marginal likelihood estimation In ML model selection we judge models by their ML score and the numbe...