CIRJE-F-930

"Estimation of the Mean Vector in a Singular Multivariate Normal Distribution"

Author Name

Tsukuma, Hisayuki and Tatsuya Kubokawa

Date April 2014
Full Paper   PDF file
Remarks   Subsequently published in Journal of Multivariate Analysis, 140, 245-258, 2015.
Abstract
  

This paper addresses the problem of estimating the mean vector of a singular multivariate normal distribution with an unknown singular covariance matrix. The maximum likelihood estimator is shown to be minimax relative to a quadratic loss weighted by the Moore-Penrose inverse of the covariance matrix. An unbiased risk estimator relative to the weighted quadratic loss is provided for a Baranchik type class of shrinkage estimators. Based on the unbiased risk estimator, a sufficient condition for the minimaxity is expressed not only as a differential inequality, but also as an integral inequality. Also, generalized Bayes minimax estimators are established by using an interesting structure of singular multivariate normal distribution.