Journal of East China Normal University(Natural Sc ›› 2007, Vol. 2007 ›› Issue (1): 65-69.
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LIU Xiang-rong1,2, WANG Jing-long2
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Abstract: Linear regression model with elliptically symmetric errors and unknown dispersion matrix was discussed. For a given matrix $ \Sigma}_{0}$, when the real dispersion matrix varying within certain range, the GLSE $\hat{\beta}({\vec \Sigma}_{0}) = (\X'{\vec \Sigma}_{0}^{-1}\X)^{-1}\X'{\vec \Sigma}_{0}^{-1}y$ is the minimum risk estimator under a large class of loss functions, which implies the GLSE is a robust estimator with respect to dispersion matrix and loss functions.
Key words: Gauss-Markov theorem, robust, equivariant estimator, symmetric convex function, generalized least squares estimator, Gauss-Markov theorem, robust, equivariant estimator, symmetric convex function
CLC Number:
0212.1
LIU Xiang-rong;WANG Jing-long. Robustness of GLSE(Chinese)[J]. Journal of East China Normal University(Natural Sc, 2007, 2007(1): 65-69.
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