Improved pretest nonparametric estimation in a multivariate regression model
Authors:
S.E. Ahmed
Affiliation:
University of Regina , Regina, Saskatchewan, S4S 0A2, CANADA
Abstract:
Shrinkage pretest nonparametric estimation of the location parameter vector in a multivariate regression model is considered when nonsample information (NSI) about the regression parameters is available. By using the quadratic risk criterion, the dominance of the pretest estimators over the usual estimators has been investigated. We demonstrate analytically and computationally that the proposed improved pretest estimator establishes a wider dominance range for the parameter under consideration than that of the usual pretest estimator in which it is superior over the unrestricted estimator.