AbstractThis article investigates the minimaxity of matrix linear estimators of regression coefficient matrix in a general multivariate linear model with a nonnegative definite covariance matrix allowing for relations between the covariance matrix and the design matrix under a balanced loss function. In a subset of all matrix linear estimators, matrix linear minimax estimators are obtained and proved to be unique almost surely on the suitable hypotheses
Let X be an observation from a p-variate normal distribution (p ≧ 3) with mean vector θ and unknown ...
Let X be an observation from a p-variate normal distribution (p ≧ 3) with mean vector θ and unknown ...
In this paper, we consider the problem of estimating the regression parameters in a multiple linear ...
AbstractThis article investigates the minimaxity of matrix linear estimators of regression coefficie...
AbstractThis article investigates linear minimax estimators of regression coefficient in a linear mo...
AbstractIt is well known that the best equivariant estimator of the variance covariance matrix of th...
AbstractLet X be a p-variate (p ≥ 3) vector normally distributed with mean θ and known covariance ma...
AbstractThis article investigates linear minimax estimators of regression coefficient in a linear mo...
AbstractThis paper considers the problem of estimating of the coefficient matrix B(p × m) in a norma...
AbstractLet X be a p-variate (p ≥ 3) vector normally distributed with mean μ and covariance Σ, and l...
AbstractMinimax-linear estimation with respect to the quadratic risk is considered among the class o...
AbstractThis paper considers the problem of estimating the coefficient matrix B: m × p in a normal m...
AbstractLet S: p × p have a nonsingular Wishart distribution with unknown matrix Σ and n degrees of ...
AbstractLet X be an observation from a p-variate (p ≥ 3) normal random vector with unknown mean vect...
AbstractAssume X = (X1, …, Xp)′ is a normal mixture distribution with density w.r.t. Lebesgue measur...
Let X be an observation from a p-variate normal distribution (p ≧ 3) with mean vector θ and unknown ...
Let X be an observation from a p-variate normal distribution (p ≧ 3) with mean vector θ and unknown ...
In this paper, we consider the problem of estimating the regression parameters in a multiple linear ...
AbstractThis article investigates the minimaxity of matrix linear estimators of regression coefficie...
AbstractThis article investigates linear minimax estimators of regression coefficient in a linear mo...
AbstractIt is well known that the best equivariant estimator of the variance covariance matrix of th...
AbstractLet X be a p-variate (p ≥ 3) vector normally distributed with mean θ and known covariance ma...
AbstractThis article investigates linear minimax estimators of regression coefficient in a linear mo...
AbstractThis paper considers the problem of estimating of the coefficient matrix B(p × m) in a norma...
AbstractLet X be a p-variate (p ≥ 3) vector normally distributed with mean μ and covariance Σ, and l...
AbstractMinimax-linear estimation with respect to the quadratic risk is considered among the class o...
AbstractThis paper considers the problem of estimating the coefficient matrix B: m × p in a normal m...
AbstractLet S: p × p have a nonsingular Wishart distribution with unknown matrix Σ and n degrees of ...
AbstractLet X be an observation from a p-variate (p ≥ 3) normal random vector with unknown mean vect...
AbstractAssume X = (X1, …, Xp)′ is a normal mixture distribution with density w.r.t. Lebesgue measur...
Let X be an observation from a p-variate normal distribution (p ≧ 3) with mean vector θ and unknown ...
Let X be an observation from a p-variate normal distribution (p ≧ 3) with mean vector θ and unknown ...
In this paper, we consider the problem of estimating the regression parameters in a multiple linear ...