AbstractIn this paper the problem of estimating a covariance matrix parametrized by an irreducible symmetric cone in a decision-theoretic set-up is considered. By making use of some results developed in a theory of finite-dimensional Euclidean simple Jordan algebras, Bartlett's decomposition and an unbiased risk estimate formula for a general family of Wishart distributions on the irreducible symmetric cone are derived; these results lead to an extension of Stein's general technique for derivation of minimax estimators for a real normal covariance matrix. Specification of the results to the multivariate normal models with covariances which are parametrized by complex, quaternion, and Lorentz types gives minimax estimators for each model
The estimation of the precision matrix of the Wishart distribution is one of classical problems stud...
AbstractThe problem of estimating large covariance matrices of multivariate real normal and complex ...
The problem of estimating, under unweighted quadratic loss, the mean of a multinormal random vector ...
AbstractIn this paper the problem of estimating a covariance matrix parametrized by an irreducible s...
AbstractLet X be an m × p matrix normally distributed with matrix of means B and covariance matrix I...
Let X be an m - p matrix normally distributed with matrix of means B and covariance matrix Im [circl...
Suppose that we have (n - a) independent observations from Np(0, [Sigma]) and that, in addition, we ...
AbstractSuppose that we have (n − a) independent observations from Np(0, Σ) and that, in addition, w...
The problem of estimating large covariance matrices of multivariate real normal and complex normal d...
A general Wishart family on a symmetric cone is a natural exponential family (NEF) having a homogene...
AbstractFor Wishart density functions, we study the risk dominance problems of the restricted maximu...
A general Wishart family on a symmetric cone is a natural exponential family (NEF) having a homogene...
For Wishart density functions, we study the risk dominance problems of the restricted maximum likeli...
Let S: p - p have a nonsingular Wishart distribution with unknown matrix [Sigma] and n degrees of fr...
Abstract In this paper, we study the problem of estimating a multivariate nor-mal covariance matrix ...
The estimation of the precision matrix of the Wishart distribution is one of classical problems stud...
AbstractThe problem of estimating large covariance matrices of multivariate real normal and complex ...
The problem of estimating, under unweighted quadratic loss, the mean of a multinormal random vector ...
AbstractIn this paper the problem of estimating a covariance matrix parametrized by an irreducible s...
AbstractLet X be an m × p matrix normally distributed with matrix of means B and covariance matrix I...
Let X be an m - p matrix normally distributed with matrix of means B and covariance matrix Im [circl...
Suppose that we have (n - a) independent observations from Np(0, [Sigma]) and that, in addition, we ...
AbstractSuppose that we have (n − a) independent observations from Np(0, Σ) and that, in addition, w...
The problem of estimating large covariance matrices of multivariate real normal and complex normal d...
A general Wishart family on a symmetric cone is a natural exponential family (NEF) having a homogene...
AbstractFor Wishart density functions, we study the risk dominance problems of the restricted maximu...
A general Wishart family on a symmetric cone is a natural exponential family (NEF) having a homogene...
For Wishart density functions, we study the risk dominance problems of the restricted maximum likeli...
Let S: p - p have a nonsingular Wishart distribution with unknown matrix [Sigma] and n degrees of fr...
Abstract In this paper, we study the problem of estimating a multivariate nor-mal covariance matrix ...
The estimation of the precision matrix of the Wishart distribution is one of classical problems stud...
AbstractThe problem of estimating large covariance matrices of multivariate real normal and complex ...
The problem of estimating, under unweighted quadratic loss, the mean of a multinormal random vector ...