TY - JOUR
T1 - Contracting towards subspaces when estimating the mean of a multivariate normal distribution
AU - Oman, Samuel D.
PY - 1982/6
Y1 - 1982/6
N2 - The problem of estimating, under unweighted quadratic loss, the mean of a multinormal random vector X with arbitrary covariance matrix V is considered. The results of James and Stein for the case V = I have since been extended by Bock to cover arbitrary V and also to allow for contracting X towards a subspace other than the origin; minimax estimators (other than X) exist if and only if the eigenvalues of V are not "too spread out." In this paper a slight variation of Bock's estimator is considered. A necessary and sufficient condition for the minimaxity of the present estimator is (*): the eigenvalues of (I - P) V should not be "too spread out," where P denotes the projection matrix associated with the subspace towards which X is contracted. The validity of (*) is then examined for a number of patterned covariance matrices (e.g., intraclass covariance, tridiagonal and first order autocovariance) and conditions are given for (*) to hold when contraction is towards the origin or towards the common mean of the components of X. (*) is also examined when X is the usual estimate of the regression vector in multiple linear regression. In several of the cases considered the eigenvalues of V are "too spread out" while those of (I - P) V are not, so that in these instances the present method can be used to produce a minimax estimate.
AB - The problem of estimating, under unweighted quadratic loss, the mean of a multinormal random vector X with arbitrary covariance matrix V is considered. The results of James and Stein for the case V = I have since been extended by Bock to cover arbitrary V and also to allow for contracting X towards a subspace other than the origin; minimax estimators (other than X) exist if and only if the eigenvalues of V are not "too spread out." In this paper a slight variation of Bock's estimator is considered. A necessary and sufficient condition for the minimaxity of the present estimator is (*): the eigenvalues of (I - P) V should not be "too spread out," where P denotes the projection matrix associated with the subspace towards which X is contracted. The validity of (*) is then examined for a number of patterned covariance matrices (e.g., intraclass covariance, tridiagonal and first order autocovariance) and conditions are given for (*) to hold when contraction is towards the origin or towards the common mean of the components of X. (*) is also examined when X is the usual estimate of the regression vector in multiple linear regression. In several of the cases considered the eigenvalues of V are "too spread out" while those of (I - P) V are not, so that in these instances the present method can be used to produce a minimax estimate.
KW - minimax estimation
KW - pre-test estimation
KW - Stein estimate
UR - http://www.scopus.com/inward/record.url?scp=49049133279&partnerID=8YFLogxK
U2 - 10.1016/0047-259X(82)90020-3
DO - 10.1016/0047-259X(82)90020-3
M3 - ???researchoutput.researchoutputtypes.contributiontojournal.article???
AN - SCOPUS:49049133279
SN - 0047-259X
VL - 12
SP - 270
EP - 290
JO - Journal of Multivariate Analysis
JF - Journal of Multivariate Analysis
IS - 2
ER -