This paper offers a new approach to address the model uncertainty in (potentially) divergent-dimensional single-index models (SIMs). We propose a model-averaging estimator based on cross-validation, which allows the dimension of covariates and the number of candidate models to increase with the sample size. We show that when all candidate models are misspecified, our model-averaging estimator is asymptotically optimal in the sense that its squared loss is asymptotically identical to that of the infeasible best possible averaging estimator. In a different situation where correct models are available in the model set, the proposed weighting scheme assigns all weights to the correct models in the asymptotic sense. We also extend our method to ...
This paper presents recent developments in model selection and model averaging for parametric and no...
Model averaging is a technique used to account for model uncertainty in the process of multimodel in...
Model averaging is often used to allow for uncertainty in the model selection process. In the freque...
Support vector machine (SVM) is a powerful classification method that has achieved great success in ...
Classical statistical analysis is split into two steps: model selection and post-selection inference...
To consider model uncertainty in global Fr\'{e}chet regression and improve density response predicti...
We study partially linear single-index models where both model parts may contain high-dimensional va...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
Model averaging is commonly used to allow for model uncertainty in parameter estimation. In the freq...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
We consider prediction based on a main model. When the main model shares partial parameters with sev...
<p>One main challenge for statistical prediction with data from multiple sources is that not all the...
This article studies optimal model averaging for partially linear models with heteroscedasticity. A ...
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...
This paper presents recent developments in model selection and model averaging for parametric and no...
Model averaging is a technique used to account for model uncertainty in the process of multimodel in...
Model averaging is often used to allow for uncertainty in the model selection process. In the freque...
Support vector machine (SVM) is a powerful classification method that has achieved great success in ...
Classical statistical analysis is split into two steps: model selection and post-selection inference...
To consider model uncertainty in global Fr\'{e}chet regression and improve density response predicti...
We study partially linear single-index models where both model parts may contain high-dimensional va...
This paper proposes a new estimator for least squares model averaging. A model average estimator is ...
Model averaging is commonly used to allow for model uncertainty in parameter estimation. In the freq...
A data-driven method for frequentist model averaging weight choice is developed for general likeliho...
We consider prediction based on a main model. When the main model shares partial parameters with sev...
<p>One main challenge for statistical prediction with data from multiple sources is that not all the...
This article studies optimal model averaging for partially linear models with heteroscedasticity. A ...
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...
This paper presents recent developments in model selection and model averaging for parametric and no...
Model averaging is a technique used to account for model uncertainty in the process of multimodel in...
Model averaging is often used to allow for uncertainty in the model selection process. In the freque...