Admissible Estimators in the General Multivariate Linear Model with Respect to Inequality Restricted Parameter Set
نویسندگان
چکیده
By using themethods of linear algebra andmatrix inequality theory, we obtain the characterization of admissible estimators in the general multivariate linear model with respect to inequality restricted parameter set. In the classes of homogeneous and general linear estimators, the necessary and suffcient conditions that the estimators of regression coeffcient function are admissible are established.
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