Title of article :
Universal Inadmissibility of Least Squares Estimator
Author/Authors :
Lu، نويسنده , , Chang-Yu and Shi، نويسنده , , Ning-Zhong، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2000
Pages :
8
From page :
22
To page :
29
Abstract :
For a p-dimensional normal distribution with mean vector θ and covariance matrix Ip, it is known that the maximum likelihood estimator θ of θ with p⩾3 is inadmissible under the squared loss. The present paper considers possible extensions of the result to the case where the loss is a member of a general class of losses of the form L(|δ−θ|Q), where L is nondecreasing and |δ−θ|Q denotes the Mahalanobis distance [(δ−θ)t Q(δ−θ)]1/2 with respect to a given positive definite matrix Q, which, without loss of generality, may be assumed to be diagonal, i.e., Q=diag(q1, …, qp), q1>q2⩾q3⩾…⩾qp>0. For the case where q1>q2=q3=…=qp>0, L. D. Brown and J. T. Hwang (1989, Ann. Statist.17, 252–267) showed that there exists an estimate of θ universally dominates θ if and only if p⩾4. This paper further extends Brown and Hwangʹs result to the case in which q1>q2 and at least there are two equal elements among q2, …, qp−1; namely, we show that, for this case, there exists an estimate of θ which universally dominates θ if and only if p⩾4. For a general Q, we gives a lower bound on p that implies the least squares estimators is universally inadmissible.
Keywords :
Universal domination , Admissibility , Stochastic domination , Least squares estimator
Journal title :
Journal of Multivariate Analysis
Serial Year :
2000
Journal title :
Journal of Multivariate Analysis
Record number :
1557616
Link To Document :
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