Best linear unbiased estimators (BLUE’s) are known to be optimal in many respects under normal assumptions. Since variance minimization doesn’t depend on normality and unbiasedness is often considered reasonable, many statisticians have felt that BLUE’s ought to preform relatively well in some generality. The result here considers the general linear model and shows that any measurable estimator that is unbiased over a moderately large family of distributions must be linear. Thus, imposing unbiasedness cannot offer any improvement over imposing linearity. The problem was suggested by Hansen, who showed that any estimator unbiased for nearly all error distributions (with finite covariance) must have a variance no smaller than that of the best...
AbstractNew results in matrix algebra applied to the fundamental bordered matrix of linear estimatio...
AbstractIn the Gauss-Markov Model, weighted least-squares adjustment generates the BLUUE (Best Linea...
In this note, we present a lemma on the best linear unbiased estimates for mul-tivariate populations
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
This note presents a set of conditions on the defining functions of regression parameter estimators o...
This note presents a set of conditions on the defining functions of regression parameter estimators o...
This note presents a set of conditions on the defining functions of regression parameter estimators o...
15 pages, 1 article*Best Linear Unbiased Estimation in Mixed Models of the Analysis of Variance* (Se...
This note presents a set of conditions on the defining functions of regression parameter estimators o...
In a standard linear model, we explore the optimality of the least squares estimator under assuption...
The concept of the linearity of estimators in finite population inference is not well defined. We pr...
New results in matrix algebra applied to the fundamental bordered matrix of linear estimation theory...
A broad definition is given of balanced data in mixed models. For all such models, it is shown that ...
AbstractNew results in matrix algebra applied to the fundamental bordered matrix of linear estimatio...
AbstractIn the Gauss-Markov Model, weighted least-squares adjustment generates the BLUUE (Best Linea...
In this note, we present a lemma on the best linear unbiased estimates for mul-tivariate populations
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
This note presents a set of conditions on the defining functions of regression parameter estimators o...
This note presents a set of conditions on the defining functions of regression parameter estimators o...
This note presents a set of conditions on the defining functions of regression parameter estimators o...
15 pages, 1 article*Best Linear Unbiased Estimation in Mixed Models of the Analysis of Variance* (Se...
This note presents a set of conditions on the defining functions of regression parameter estimators o...
In a standard linear model, we explore the optimality of the least squares estimator under assuption...
The concept of the linearity of estimators in finite population inference is not well defined. We pr...
New results in matrix algebra applied to the fundamental bordered matrix of linear estimation theory...
A broad definition is given of balanced data in mixed models. For all such models, it is shown that ...
AbstractNew results in matrix algebra applied to the fundamental bordered matrix of linear estimatio...
AbstractIn the Gauss-Markov Model, weighted least-squares adjustment generates the BLUUE (Best Linea...
In this note, we present a lemma on the best linear unbiased estimates for mul-tivariate populations