AbstractAdmissible prediction problems in finite populations with arbitrary rank under matrix loss function are investigated. For the general random effects linear model, we obtained the necessary and sufficient conditions for a linear predictor of the linearly predictable variable to be admissible in the two classes of homogeneous linear predictors and all linear predictors and the class that contains all predictors, respectively. Moreover, we prove that the best linear unbiased predictors (BLUPs) of the population total and the finite population regression coefficient are admissible under different assumptions of superpopulation models respectively
The problem of quadratic prediction for population quadratic quantities in finite populations has be...
In this contribution, we extend the existing theory of minimum mean squared error prediction (best p...
We present a general modelling method for optimal probability prediction over future observations, i...
AbstractAdmissible prediction problems in finite populations with arbitrary rank under matrix loss f...
This note shows that under the assumption of a Gaussian superpopulation model with a general symmetr...
A method for constructing the best unbiased predictors in finite populations are stated by using th...
AbstractThe problem of quadratic prediction for population quadratic quantities in finite population...
In this article, we consider the optimal prediction of the finite population distribution function u...
AbstractLinear and quadratic prediction problems in finite populations have become of great interest...
Prediction of random effects is an important problem with expanding applications. In the simplest co...
We propose a model-based restricted best (RB) predictor of a finite population mean that minimizes t...
The multivariate mixed linear model or multivariate components of variance model with equal replicat...
A linear statistic Fy is called linearly sufficient for the estimable parametric function of X*β und...
ABSTRACT Prediction of random effects is an important problem with expanding applications. In the si...
Prediction of random effects is an important problem with expanding applications. In the simplest co...
The problem of quadratic prediction for population quadratic quantities in finite populations has be...
In this contribution, we extend the existing theory of minimum mean squared error prediction (best p...
We present a general modelling method for optimal probability prediction over future observations, i...
AbstractAdmissible prediction problems in finite populations with arbitrary rank under matrix loss f...
This note shows that under the assumption of a Gaussian superpopulation model with a general symmetr...
A method for constructing the best unbiased predictors in finite populations are stated by using th...
AbstractThe problem of quadratic prediction for population quadratic quantities in finite population...
In this article, we consider the optimal prediction of the finite population distribution function u...
AbstractLinear and quadratic prediction problems in finite populations have become of great interest...
Prediction of random effects is an important problem with expanding applications. In the simplest co...
We propose a model-based restricted best (RB) predictor of a finite population mean that minimizes t...
The multivariate mixed linear model or multivariate components of variance model with equal replicat...
A linear statistic Fy is called linearly sufficient for the estimable parametric function of X*β und...
ABSTRACT Prediction of random effects is an important problem with expanding applications. In the si...
Prediction of random effects is an important problem with expanding applications. In the simplest co...
The problem of quadratic prediction for population quadratic quantities in finite populations has be...
In this contribution, we extend the existing theory of minimum mean squared error prediction (best p...
We present a general modelling method for optimal probability prediction over future observations, i...