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...
This master thesis refers to the determination of certain choice criteria for minimaxes and admiss...
AbstractLet X be a p-variate (p ≥ 3) vector normally distributed with mean θ and known covariance ma...
Let X be an observation from a p-variate (p >= 3) normal random vector with unknown mean vector [the...
AbstractThe problem of estimating, under unweighted quadratic loss, the mean of a multinormal random...
AbstractThis paper is concerned with the problem of estimating a matrix of means in multivariate nor...
This paper is concerned with the problem of estimating a matrix of means in multivariate normal dist...
AbstractThis paper considers the estimation of the mean vector θ of a p-variate normal distribution ...
This paper considers the estimation of the mean vector [theta] of a p-variate normal distribution wi...
Assume X = (X1, ..., Xp)' is a normal mixture distribution with density w.r.t. Lebesgue measure, , w...
AbstractBased on independent samples from several multivariate normal populations, possibly of diffe...
Let X be a p-variate (p >= 3) vector normally distributed with mean [theta] and known covariance mat...
AbstractLet X be a p-variate (p ≥ 3) vector normally distributed with mean μ and covariance Σ, and l...
Let X be an m - p matrix normally distributed with matrix of means B and covariance matrix Im [circl...
Let X be an observation from a p-variate normal distribution (p ≧ 3) with mean vector θ and unknown ...
AbstractAssume X = (X1, …, Xp)′ is a normal mixture distribution with density w.r.t. Lebesgue measur...
This master thesis refers to the determination of certain choice criteria for minimaxes and admiss...
AbstractLet X be a p-variate (p ≥ 3) vector normally distributed with mean θ and known covariance ma...
Let X be an observation from a p-variate (p >= 3) normal random vector with unknown mean vector [the...
AbstractThe problem of estimating, under unweighted quadratic loss, the mean of a multinormal random...
AbstractThis paper is concerned with the problem of estimating a matrix of means in multivariate nor...
This paper is concerned with the problem of estimating a matrix of means in multivariate normal dist...
AbstractThis paper considers the estimation of the mean vector θ of a p-variate normal distribution ...
This paper considers the estimation of the mean vector [theta] of a p-variate normal distribution wi...
Assume X = (X1, ..., Xp)' is a normal mixture distribution with density w.r.t. Lebesgue measure, , w...
AbstractBased on independent samples from several multivariate normal populations, possibly of diffe...
Let X be a p-variate (p >= 3) vector normally distributed with mean [theta] and known covariance mat...
AbstractLet X be a p-variate (p ≥ 3) vector normally distributed with mean μ and covariance Σ, and l...
Let X be an m - p matrix normally distributed with matrix of means B and covariance matrix Im [circl...
Let X be an observation from a p-variate normal distribution (p ≧ 3) with mean vector θ and unknown ...
AbstractAssume X = (X1, …, Xp)′ is a normal mixture distribution with density w.r.t. Lebesgue measur...
This master thesis refers to the determination of certain choice criteria for minimaxes and admiss...
AbstractLet X be a p-variate (p ≥ 3) vector normally distributed with mean θ and known covariance ma...
Let X be an observation from a p-variate (p >= 3) normal random vector with unknown mean vector [the...