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Original Articles

Optimal non-diagonal-type estimators in linear regression under the prediction error sum of squares criterion

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Pages 2418-2429 | Received 09 Nov 2013, Accepted 27 Apr 2015, Published online: 01 Dec 2016
 

ABSTRACT

This article considers the notion of the non-diagonal-type estimator (NDTE) under the prediction error sum of squares (PRESS) criterion. First, the optimal NDTE in the PRESS sense is derived theoretically and applied to the cosmetics sales data. Second, we make a further study to extend the NDTE to the general case of the covariance matrix of the model and then give a Bayesian explanation for this extension. Third, two remarks concerned with some potential shortcomings of the NDTE are presented and an alternative solution is provided and illustrated by means of simulations.

MATHEMATICS SUBJECT CLASSIFICATION:

Acknowledgments

The authors are very grateful to the referees for valuable comments and constructive criticisms which result in the present version. Research supported in part by the National Natural Science Foundation of China (61374183, 10971097) and the Humanistic and Social Science Foundation of Ministry of Education of China (No. 12YJA630122).

Notes

2 Specifically, we first center and scale the data and then use the similar model (without the intercept term), because the three predictor variables have no the same unit. This is distinguished from the original model which uses a log-linear model.

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