This paper considers the problem of selecting a set of regressors when the response variable is distributed according to a specified parametric model and observations are censored. Under a Bayesian perspective, the most widely used tools are Bayes factors (BFs), which are undefined when improper priors are used. In order to overcome this issue, fractional (FBF) and intrinsic (IBF) BFs have become common tools for model selection. Both depend on the size, Nt, of a minimal training sample (MTS), while the IBF also depends on the specific MTS used. In the case of regression with censored data, the definition of an MTS is problematic because only uncensored data allow to turn the improper prior into a proper posterior and also because full expl...
In general, model selection is an important prelude to subsequent statistical inference in risk asse...
In the Bayesian approach, the Bayes factor is the main too} for mode} selection and hypothesis testi...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
This paper considers the problem of selecting a set of regressors when the response variable is dist...
The problem of covariate selection for regression models with right censored data is considered. It ...
In this thesis we study the problem of selecting a set of regressors when the response variable foll...
This paper deals with the variable selection problem in linear regression models and its solution by...
We investigate the Bayesian Information Criterion (BIC) for variable selection in models for censore...
In this short paper, I consider the variable selection problem in linear regression models and revie...
We consider the variable selection problem when the response is sub- ject to censoring. A main parti...
In the Bayesian approach to parametric model comparison, the use of improper priors is problematic d...
In the Bayesian approach to model selection and hypothesis testing, the Bayes factor plays a central...
We consider the variable selection problem when the response is subject to censoring. A main particu...
Title from PDF of title page (University of Missouri--Columbia, viewed on May 21, 2012).The entire t...
The selection of predictors to include is a crucial problem in building a multiple regression model....
In general, model selection is an important prelude to subsequent statistical inference in risk asse...
In the Bayesian approach, the Bayes factor is the main too} for mode} selection and hypothesis testi...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
This paper considers the problem of selecting a set of regressors when the response variable is dist...
The problem of covariate selection for regression models with right censored data is considered. It ...
In this thesis we study the problem of selecting a set of regressors when the response variable foll...
This paper deals with the variable selection problem in linear regression models and its solution by...
We investigate the Bayesian Information Criterion (BIC) for variable selection in models for censore...
In this short paper, I consider the variable selection problem in linear regression models and revie...
We consider the variable selection problem when the response is sub- ject to censoring. A main parti...
In the Bayesian approach to parametric model comparison, the use of improper priors is problematic d...
In the Bayesian approach to model selection and hypothesis testing, the Bayes factor plays a central...
We consider the variable selection problem when the response is subject to censoring. A main particu...
Title from PDF of title page (University of Missouri--Columbia, viewed on May 21, 2012).The entire t...
The selection of predictors to include is a crucial problem in building a multiple regression model....
In general, model selection is an important prelude to subsequent statistical inference in risk asse...
In the Bayesian approach, the Bayes factor is the main too} for mode} selection and hypothesis testi...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...