Frequentist model averaging as a newly emerging approach provides us a way to overcome the uncertainty caused by traditional model selection in estimation. It acknowledges the contribution of multiple models, instead of making inference and prediction purely based on one single model. Functional logistic regression is also a burgeoning method in studying the relationship between functional covariates and a binary response. In this paper, the frequentist model averaging approach is applied to the functional logistic regression model. A simulation study is implemented to compare its performance with model selection. The analysis shows that when conditional probability is taken as the focus parameter, model averaging is superior to model selec...
Model averaging is an alternative approach to classical model selection in model estimation. The mod...
Model selection methods provide a way to select one model among a set of models in a statistically v...
Model averaging is a technique used to account for model uncertainty in the process of multimodel in...
Frequentist model averaging as a newly emerging approach provides us a way to overcome the uncertain...
Abstract In applications, the traditional estimation procedure generally begins with model selection...
AbstractRecently, penalized regression methods have attracted much attention in the statistical lite...
This paper presents recent developments in model selection and model averaging for parametric and no...
Recently, penalized regression methods have attracted much attention in the statistical literature. ...
The traditional use of model selection methods in practice is to proceed as if the final selected mo...
Abstract. The traditional use of model selection methods in practice is to proceed as if the final s...
Logistic regression is the standard method for assessing predictors of diseases. In logistic regress...
This book provides a concise and accessible overview of model averaging, with a focus on application...
Frequentist model averaging has started to grow in popularity, and it is considered a good alternati...
To consider model uncertainty in global Fr\'{e}chet regression and improve density response predicti...
<p>This paper considers model averaging for the ordered probit and nested logit models, which are wi...
Model averaging is an alternative approach to classical model selection in model estimation. The mod...
Model selection methods provide a way to select one model among a set of models in a statistically v...
Model averaging is a technique used to account for model uncertainty in the process of multimodel in...
Frequentist model averaging as a newly emerging approach provides us a way to overcome the uncertain...
Abstract In applications, the traditional estimation procedure generally begins with model selection...
AbstractRecently, penalized regression methods have attracted much attention in the statistical lite...
This paper presents recent developments in model selection and model averaging for parametric and no...
Recently, penalized regression methods have attracted much attention in the statistical literature. ...
The traditional use of model selection methods in practice is to proceed as if the final selected mo...
Abstract. The traditional use of model selection methods in practice is to proceed as if the final s...
Logistic regression is the standard method for assessing predictors of diseases. In logistic regress...
This book provides a concise and accessible overview of model averaging, with a focus on application...
Frequentist model averaging has started to grow in popularity, and it is considered a good alternati...
To consider model uncertainty in global Fr\'{e}chet regression and improve density response predicti...
<p>This paper considers model averaging for the ordered probit and nested logit models, which are wi...
Model averaging is an alternative approach to classical model selection in model estimation. The mod...
Model selection methods provide a way to select one model among a set of models in a statistically v...
Model averaging is a technique used to account for model uncertainty in the process of multimodel in...