General linear estimators under the prediction error sum of squares criterion in a linear regression model |
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Authors: | Xu-Qing Liu Bo Li |
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Affiliation: | Faculty of Mathematics and Physics , Huaiyin Institute of Technology , Huai'an , 223003 , P.R. China |
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Abstract: | In this paper, the notion of the general linear estimator and its modified version are introduced using the singular value decomposition theorem in the linear regression model y=X β+e to improve some classical linear estimators. The optimal selections of the biasing parameters involved are theoretically given under the prediction error sum of squares criterion. A numerical example and a simulation study are finally conducted to illustrate the superiority of the proposed estimators. |
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Keywords: | linear regression prediction error sum of squares general linear estimator modified general linear estimator |
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