Improvement of the Liu estimator in linear regression model |
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Authors: | M. H. Hubert P. Wijekoon |
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Affiliation: | (1) Department of Economics and Management, Vavuniya Campus, University of Jaffna, Sri Lanka;(2) Department of Statistics and Computer Science, Faculty of Science, University of Peradeniya, Peradeniya, Sri Lanka |
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Abstract: | In the presence of stochastic prior information, in addition to the sample, Theil and Goldberger (1961) introduced a Mixed Estimator for the parameter vector β in the standard multiple linear regression model (T,Xβ,σ2 I). Recently, the Liu estimator which is an alternative biased estimator for β has been proposed by Liu (1993). In this paper we introduce another new Liu type biased estimator called Stochastic restricted Liu estimator for β, and discuss its efficiency. The necessary and sufficient conditions for mean squared error matrix of the Stochastic restricted Liu estimator to exceed the mean squared error matrix of the mixed estimator will be derived for the two cases in which the parametric restrictions are correct and are not correct. In particular we show that this new biased estimator is superior in the mean squared error matrix sense to both the Mixed estimator and to the biased estimator introduced by Liu (1993). |
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Keywords: | Ordinary least squares estimator, mixed estimator Liu estimator Stochastic Restricted Liu estimator Mean Squared error matrix |
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