To consider model uncertainty in global Fr\'{e}chet regression and improve density response prediction, we propose a frequentist model averaging method. The weights are chosen by minimizing a cross-validation criterion based on Wasserstein distance. In the cases where all candidate models are misspecified, we prove that the corresponding model averaging estimator has asymptotic optimality, achieving the lowest possible Wasserstein distance. When there are correctly specified candidate models, we prove that our method asymptotically assigns all weights to the correctly specified models. Numerical results of extensive simulations and a real data analysis on intracerebral hemorrhage data strongly favour our method
A data-driven method for frequentist model averaging weight choice is developed for gen-eral likelih...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
Support vector machine (SVM) is a powerful classification method that has achieved great success in ...
This paper offers a new approach to address the model uncertainty in (potentially) divergent-dimensi...
This paper develops a frequentist model averaging approach for threshold model specifications. The r...
Model averaging is a technique used to account for model uncertainty in the process of multimodel in...
Abstract In applications, the traditional estimation procedure generally begins with model selection...
<p>One main challenge for statistical prediction with data from multiple sources is that not all the...
This paper presents recent developments in model selection and model averaging for parametric and no...
In practice, it is common that a best fitting structural equation model (SEM) is selected from a set...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
Model averaging is an alternative approach to classical model selection in model estimation. The mod...
Abstract. The traditional use of model selection methods in practice is to proceed as if the final s...
This book provides a concise and accessible overview of model averaging, with a focus on application...
Recently, penalized regression methods have attracted much attention in the statistical literature. ...
A data-driven method for frequentist model averaging weight choice is developed for gen-eral likelih...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
Support vector machine (SVM) is a powerful classification method that has achieved great success in ...
This paper offers a new approach to address the model uncertainty in (potentially) divergent-dimensi...
This paper develops a frequentist model averaging approach for threshold model specifications. The r...
Model averaging is a technique used to account for model uncertainty in the process of multimodel in...
Abstract In applications, the traditional estimation procedure generally begins with model selection...
<p>One main challenge for statistical prediction with data from multiple sources is that not all the...
This paper presents recent developments in model selection and model averaging for parametric and no...
In practice, it is common that a best fitting structural equation model (SEM) is selected from a set...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
Model averaging is an alternative approach to classical model selection in model estimation. The mod...
Abstract. The traditional use of model selection methods in practice is to proceed as if the final s...
This book provides a concise and accessible overview of model averaging, with a focus on application...
Recently, penalized regression methods have attracted much attention in the statistical literature. ...
A data-driven method for frequentist model averaging weight choice is developed for gen-eral likelih...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
Support vector machine (SVM) is a powerful classification method that has achieved great success in ...