Estimation strategies for the regression coefficient parameter matrix in multivariate multiple regression

Estimation strategies for the regression coefficient parameter matrix in multivariate multiple regression

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Article ID: iaor201112177
Volume: 65
Issue: 4
Start Page Number: 387
End Page Number: 406
Publication Date: Nov 2011
Journal: Statistica Neerlandica
Authors: ,
Keywords: statistics: general, statistics: inference, matrices, simulation, simulation: applications, probability, stochastic processes
Abstract:

We consider improved estimation strategies for the parameter matrix in multivariate multiple regression under a general and natural linear constraint. In the context of two competing models where one model includes all predictors and the other restricts variable coefficients to a candidate linear subspace based on prior information, there is a need of combining two estimation techniques in an optimal way. In this scenario, we suggest some shrinkage estimators for the targeted parameter matrix. Also, we examine the relative performances of the suggested estimators in the direction of the subspace and candidate subspace restricted type estimators. We develop a large sample theory for the estimators including derivation of asymptotic bias and asymptotic distributional risk of the suggested estimators. Furthermore, we conduct Monte Carlo simulation studies to appraise the relative performance of the suggested estimators with the classical estimators. The methods are also applied on a real data set for illustrative purposes.

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