Simultaneous estimation of parameters in different linear models and applications to biometric problems

Radhakrishna Rao, C. (1975) Simultaneous estimation of parameters in different linear models and applications to biometric problems Biometrics, 31 (2). pp. 545-554. ISSN 0006-341X

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Official URL: http://www.jstor.org/pss/2529436

Abstract

Empirical Bayes procedure is employed in simultaneous estimation of vector parameters from a number of Gauss-Markoff linear models. It is shown that with respect to quadratic loss function, empirical Bayes estimators are better than least squares estimators. While estimating the parameter for a particular linear model, a suggestion has been made for distinguishing between the loss due to decision maker and the loss due to individual. A method has been proposed but not fully studied to achieve balance between the two losses. Finally the problem of predicting future observations in a linear model has been considered.

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Deposited On:12 Aug 2011 13:19
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