The weighted-average least squares (WALS) approach, introduced by Magnus et al. (2010) in the context of Gaussian linear models, has been shown to enjoy important advantages Over other strictly Bayesian and strictly frequentist model-averaging estimators when accounting for problems of uncertainty in the choice of the regressors. In this paper we extend the WALS approach to deal with uncertainty about the specification of the linear predictor in the wider class of generalized linear models (GLMs). We study the large-sample properties of the WALS estimator for GLMs under a local misspecification framework, and the finite-sample properties of this estimator by a Monte Carlo experiment the design of which is based on a real empirical analysis ...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
In this thesis we develop a method for efficient model building in nonlinear members of the GLM fami...
Three well known methods for constructing prediction intervals in a generalized linear mixed model (...
The weighted-average least squares (WALS) approach, introduced by Magnus et al. (2010) in the contex...
Model averaging has become a popular method of estimation, following increasing evidence that model ...
We consider inference for linear regression models estimated by weighted-average least squares (WALS...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
Prediction under model uncertainty is an important and difficult issue. Traditional prediction metho...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
Generalized Linear Mixed models(GLMMs)have rapidly become a widely used tool for modelling clustered...
Estimation results for the ordinary least squares (OLS) model and the generalized linear mixed model...
The recently proposed 'weighted average least squares' (WALS) estimator is a Bayesian combination of...
Generalized linear models (GLM) and generalized additive models (GAM) are popular statistical method...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
In this thesis we develop a method for efficient model building in nonlinear members of the GLM fami...
Three well known methods for constructing prediction intervals in a generalized linear mixed model (...
The weighted-average least squares (WALS) approach, introduced by Magnus et al. (2010) in the contex...
Model averaging has become a popular method of estimation, following increasing evidence that model ...
We consider inference for linear regression models estimated by weighted-average least squares (WALS...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
Prediction under model uncertainty is an important and difficult issue. Traditional prediction metho...
In this article, we describe the estimation of linear regression models with uncertainty about the c...
Generalized Linear Mixed models(GLMMs)have rapidly become a widely used tool for modelling clustered...
Estimation results for the ordinary least squares (OLS) model and the generalized linear mixed model...
The recently proposed 'weighted average least squares' (WALS) estimator is a Bayesian combination of...
Generalized linear models (GLM) and generalized additive models (GAM) are popular statistical method...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
In this thesis we develop a method for efficient model building in nonlinear members of the GLM fami...
Three well known methods for constructing prediction intervals in a generalized linear mixed model (...