<p>In statistical prediction, classical approaches for model selection and model evaluation based on covariance penalties are still widely used. Most of the literature on this topic is based on what we call the “Fixed-X” assumption, where covariate values are assumed to be nonrandom. By contrast, it is often more reasonable to take a “Random-X” view, where the covariate values are independently drawn for both training and prediction. To study the applicability of covariance penalties in this setting, we propose a decomposition of Random-X prediction error in which the randomness in the covariates contributes to both the bias and variance components. This decomposition is general, but we concentrate on the fundamental case of ordinary least-...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
Abstract This work gives a simultaneous analysis of both the ordinary least squares estimator and th...
SUMMARY. A new method is given to obtain an estimator for the covariance matrix of the response vari...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
We consider the mean prediction error of a classification or regression procedure as well as its cro...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
Abstract This work gives a simultaneous analysis of both the ordinary least squares estimator and th...
SUMMARY. A new method is given to obtain an estimator for the covariance matrix of the response vari...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
The mean prediction error of a classification or regression procedure can be estimated using resampl...