Key points are not available for this paper at this time.
Unbiased risk estimators are derived for estimators in certain classes of equivariant estimators of multinormal matrix means, , and regression coefficients. In all cases the covariance matrix is unknown. The underlying method, a multivariate version of that of James and Stein (1960), uses zonal polynomial expansions for the distributions of noncentral statistics. This gives, in one case, the required generalization of the Pitman-Robbins representation of noncentral chi-square statistics including the appropriate multivariate Poisson law. In the other case, a multivariate negative binomial law emerges. The result for regression coefficients suggests a new minimax estimator and, essentially, an extension of Baranchik's result.
Jim Zidek (Sat,) studied this question.