Logistic regression is the standard method for assessing predictors of diseases. In logistic regression analyses, a stepwise strategy is often adopted to choose a subset of variables. Inference about the predictors is then made based on the chosen model constructed of only those variables retained in that model. This method subsequently ignores both the variables not selected by the procedure, and the uncertainty due to the variable selection procedure. This limitation may be addressed by adopting a Bayesian model averaging approach, which selects a number of all possible such models, and uses the posterior probabilities of these models to perform all inferences and predictions. This study compares the Bayesian model averaging approach with...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
In public health and in applied research in general, analysts frequently use automated variable sele...
When a number of distinct models contend for use in prediction, the choice of a single model can off...
Covariate and confounder selection in case-control studies is most commonly carried out using either...
The standard methodology when building statistical models has been to use one of several algorithms ...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
This paper focuses on the problem of variable selection in linear regression models. I briefy revie...
Recently, penalized regression methods have attracted much attention in the statistical literature. ...
To analyse the risk factors of coronary heart disease (CHD), we apply the Bayesian model averaging a...
This paper investigates the performance of the predictive distributions of Bayesian models. To overc...
Predictions of disease outcome in prognostic factor models are usually based on one selected model. ...
Background: The problem of variable selection for risk factor modeling is an ongoing challenge in st...
The problem of evaluating the goodness of the predictive distributions devel-oped by the Bayesian mo...
Model selection methods provide a way to select one model among a set of models in a statistically v...
AbstractRecently, penalized regression methods have attracted much attention in the statistical lite...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
In public health and in applied research in general, analysts frequently use automated variable sele...
When a number of distinct models contend for use in prediction, the choice of a single model can off...
Covariate and confounder selection in case-control studies is most commonly carried out using either...
The standard methodology when building statistical models has been to use one of several algorithms ...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
This paper focuses on the problem of variable selection in linear regression models. I briefy revie...
Recently, penalized regression methods have attracted much attention in the statistical literature. ...
To analyse the risk factors of coronary heart disease (CHD), we apply the Bayesian model averaging a...
This paper investigates the performance of the predictive distributions of Bayesian models. To overc...
Predictions of disease outcome in prognostic factor models are usually based on one selected model. ...
Background: The problem of variable selection for risk factor modeling is an ongoing challenge in st...
The problem of evaluating the goodness of the predictive distributions devel-oped by the Bayesian mo...
Model selection methods provide a way to select one model among a set of models in a statistically v...
AbstractRecently, penalized regression methods have attracted much attention in the statistical lite...
Standard statistical practice ignores model uncertainty. Data analysts typically select a model from...
In public health and in applied research in general, analysts frequently use automated variable sele...
When a number of distinct models contend for use in prediction, the choice of a single model can off...