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The Stein phenomenon for monotone incomplete multivariate normal data
Authors:Donald St P Richards  Tomoya Yamada
Institution:a Department of Statistics, Penn State University, University Park, PA 16802, USA
b Department of Economics, Sapporo Gakuin University, 11 Bunkyodai, Ebetsu, Hokkaido, Japan
Abstract:We establish the Stein phenomenon in the context of two-step, monotone incomplete data drawn from View the MathML source, a (p+q)-dimensional multivariate normal population with mean View the MathML source and covariance matrix View the MathML source. On the basis of data consisting of n observations on all p+q characteristics and an additional Nn observations on the last q characteristics, where all observations are mutually independent, denote by View the MathML source the maximum likelihood estimator of View the MathML source. We establish criteria which imply that shrinkage estimators of James-Stein type have lower risk than View the MathML source under Euclidean quadratic loss. Further, we show that the corresponding positive-part estimators have lower risk than their unrestricted counterparts, thereby rendering the latter estimators inadmissible. We derive results for the case in which View the MathML source is block-diagonal, the loss function is quadratic and non-spherical, and the shrinkage estimator is constructed by means of a nondecreasing, differentiable function of a quadratic form in View the MathML source. For the problem of shrinking View the MathML source to a vector whose components have a common value constructed from the data, we derive improved shrinkage estimators and again determine conditions under which the positive-part analogs have lower risk than their unrestricted counterparts.
Keywords:primary  62C15  62H10  secondary  60D10  62E15
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