On Combining Estimation Problems Under Quadratic Loss: A Generalization
Autor: | Nkurunziza, Severien |
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Rok vydání: | 2015 |
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Druh dokumentu: | Working Paper |
Popis: | The main theorem in Judge and Mittelhammer [Judge, G. G., and Mittelhammer, R. (2004), A Semiparametric Basis for Combining Estimation Problems under Quadratic Loss; JASA, 99, 466, 479--487] stipulates that, in the context of nonzero correlation, a sufficient condition for the Stein rule (SR)-type estimator to dominate the base estimator is that the dimension $k$ should be at least 5. Thanks to some refined inequalities, this dominance result is proved in its full generality; for a class of estimators which includes the SR estimator as a special case. Namely, we prove that, for any member of the derived class, $k\geqslant 3$ is a sufficient condition regardless of the correlation factor. We also relax the Gaussian condition of the distribution of the base estimator, as we consider the family of elliptically contoured variates. Finally, we waive the condition on the invertibility of the variance-covariance matrix of the base and the competing estimators. Our theoretical findings are corroborated by some simulation studies, and the proposed method is applied to the Cigarette dataset. Comment: 37 pages |
Databáze: | arXiv |
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