In this paper, we consider the prediction problem in multiple linear regression model in which the number of predictor variables, p, is extremely large compared to the number of available observations, n. The least squares predictor based on a generalized inverse is not efficient. We propose six empirical Bayes estimators of the regression parameters. Three of them are shown to have uniformly lower prediction error than the least squares predictors when the vector of regressor variables are assumed to be random with mean vector zero and the covariance matrix (1/n)X tX where X t = (x1,...,xn) is the p × n matrix of observations on the regressor vector centered from their sample means. For other estimators, we use simulation to show its super...
Exact collinearity between regressors makes their individual coefficients not identified. But, given...
International audiencePredicting a new response from a covariate is a challenging task in regression...
AbstractThe problem of optimal prediction in the stochastic linear regression model with infinitely ...
For a long time, it thought impossible to find a precise predictor model with a large number of inde...
In this paper we consider the problem of estimating the matrix of regression coefficients in a multi...
When a number of distinct models contend for use in prediction, the choice of a single model can off...
Empirical Bayes is a versatile approach to “learn from a lot” in two ways: first, from a large numbe...
We investigate the empirical Bayes estimation problem of multivariate regression coeffi-cients under...
In this paper we consider the problem of estimating the matrix of regression coefficients in a multi...
The multivariate normal regression model, in which a vector y of responses is to be predicted by a v...
AbstractThe multivariate normal regression model, in which a vector y of responses is to be predicte...
We develop a new empirical Bayes analysis in multiple regression models. In the present work we con...
In this paper, we consider the problem of estimating the regression parameters in a multiple linear ...
We consider multiple linear regression models under nonnormality. We derive modified maximum likelih...
The problem of optimal prediction in the stochastic linear regression model with infinitely many par...
Exact collinearity between regressors makes their individual coefficients not identified. But, given...
International audiencePredicting a new response from a covariate is a challenging task in regression...
AbstractThe problem of optimal prediction in the stochastic linear regression model with infinitely ...
For a long time, it thought impossible to find a precise predictor model with a large number of inde...
In this paper we consider the problem of estimating the matrix of regression coefficients in a multi...
When a number of distinct models contend for use in prediction, the choice of a single model can off...
Empirical Bayes is a versatile approach to “learn from a lot” in two ways: first, from a large numbe...
We investigate the empirical Bayes estimation problem of multivariate regression coeffi-cients under...
In this paper we consider the problem of estimating the matrix of regression coefficients in a multi...
The multivariate normal regression model, in which a vector y of responses is to be predicted by a v...
AbstractThe multivariate normal regression model, in which a vector y of responses is to be predicte...
We develop a new empirical Bayes analysis in multiple regression models. In the present work we con...
In this paper, we consider the problem of estimating the regression parameters in a multiple linear ...
We consider multiple linear regression models under nonnormality. We derive modified maximum likelih...
The problem of optimal prediction in the stochastic linear regression model with infinitely many par...
Exact collinearity between regressors makes their individual coefficients not identified. But, given...
International audiencePredicting a new response from a covariate is a challenging task in regression...
AbstractThe problem of optimal prediction in the stochastic linear regression model with infinitely ...