Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
1146306 | Journal of Multivariate Analysis | 2010 | 22 Pages |
Abstract
We establish the Stein phenomenon in the context of two-step, monotone incomplete data drawn from Np+q(μ,Σ), a (p+q)-dimensional multivariate normal population with mean μ and covariance matrix Σ. On the basis of data consisting of n observations on all p+q characteristics and an additional Nân observations on the last q characteristics, where all observations are mutually independent, denote by Î¼Ì the maximum likelihood estimator of μ. We establish criteria which imply that shrinkage estimators of James-Stein type have lower risk than Î¼Ì 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 Σ 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 μÌ. For the problem of shrinking Î¼Ì 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
Related Topics
Physical Sciences and Engineering
Mathematics
Numerical Analysis
Authors
Donald St. P. Richards, Tomoya Yamada,