AbstractAssuming a general linear model with known covariance matrix, several linear and nonlinear predictors are presented and their properties are discussed. In the context of simultaneous multiple prediction, a total sum of squared errors is suggested as a loss function for comparing predictors. Based on a rundamental relationship hetween prediction and estimation, a very general class of predictors is developed from which predictors with uniformly smaller risk than that of the classical best linear unbiased (i.e., universal kriging) predictor can be constructed
We propose the Liu estimator and the Liu predictor via the penalized log-likelihood approach in line...
Both Bayesian and classical approaches are used to derive the prediction distribution of a set of fu...
Based on previous results on linear predictors and Kalman filter, this paper will formulate multi-st...
AbstractAssuming a general linear model with known covariance matrix, several linear and nonlinear p...
AbstractThis paper deals with the problem of Stein-rule prediction in a general linear model. Our st...
The multivariate mixed linear model or multivariate components of variance model with equal replicat...
The multivariate mixed linear model or multivariate components of variance model with equal replicat...
This paper presents the techniques of likelihood prediction for the generalized linear mixed models....
From the literature three types of predictors for factor scores are available. These are characteriz...
The problem of prediction is considered in a multidimensional setting. Extending an idea presented b...
This paper studies the prediction based on a composite target function that allows to simultaneously...
In this contribution, we extend the existing theory of minimum mean squared error prediction (best p...
AbstractLinear and quadratic prediction problems in finite populations have become of great interest...
The simultaneous prediction of average and actual values of study variable in a linear regression mo...
Abst ract. The problem considered is that of predicting the value of a linear functional of a random...
We propose the Liu estimator and the Liu predictor via the penalized log-likelihood approach in line...
Both Bayesian and classical approaches are used to derive the prediction distribution of a set of fu...
Based on previous results on linear predictors and Kalman filter, this paper will formulate multi-st...
AbstractAssuming a general linear model with known covariance matrix, several linear and nonlinear p...
AbstractThis paper deals with the problem of Stein-rule prediction in a general linear model. Our st...
The multivariate mixed linear model or multivariate components of variance model with equal replicat...
The multivariate mixed linear model or multivariate components of variance model with equal replicat...
This paper presents the techniques of likelihood prediction for the generalized linear mixed models....
From the literature three types of predictors for factor scores are available. These are characteriz...
The problem of prediction is considered in a multidimensional setting. Extending an idea presented b...
This paper studies the prediction based on a composite target function that allows to simultaneously...
In this contribution, we extend the existing theory of minimum mean squared error prediction (best p...
AbstractLinear and quadratic prediction problems in finite populations have become of great interest...
The simultaneous prediction of average and actual values of study variable in a linear regression mo...
Abst ract. The problem considered is that of predicting the value of a linear functional of a random...
We propose the Liu estimator and the Liu predictor via the penalized log-likelihood approach in line...
Both Bayesian and classical approaches are used to derive the prediction distribution of a set of fu...
Based on previous results on linear predictors and Kalman filter, this paper will formulate multi-st...