International audienceThis paper concerns a method of estimation of variance components in a random effect linear model. It is mainly a resampling method and relies on the Jackknife principle. The derived estimators are presented as least squares estimators in an appropriate linear model, and one of them appears as a MINQUE (Minimum Norm Quadratic Unbiased Estimation) estimator. Our resampling method is illustrated by an example given by C. R. Rao [7] and some optimal properties of our estimator are derived for this example. In the last part, this method is used to derive an estimation of variance components in a random effect linear model when one of the components is assumed to be known
The jackknife method, a resampling technique, has been widely used for statistical tests for years. ...
This paper focuses on a design-consistent regression estimator in which the “auxiliaries” are estima...
46 pages, 1 article*Detailed Derivations for Minque and Mivque Estimation of Variance Components fro...
This thesis presents the Jackknife Variance Estimator as a cost efficient alternative to the Bootstr...
We propose a jackknife variance estimator for the pop-ulation average from two, two-phase samples af...
Inference on the regression parameters in a heteroscedastic linear regression model with replication...
Includes bibliographical references.Many important estimators in statistics have the property that t...
The variance is the measure of spread from the center. Therefore, how to accurately estimate varianc...
The variance is the measure of spread from the center. Therefore, how to accurately estimate varianc...
We write a linear model in the form Y=Xβ+Uξ, where β is an unknown parameter and ξ is a hypothetical...
Quenouille has developed a procedure, later termed the jackknife by Tukey, for reducing the bias of ...
We consider data in which each observed subject belongs to one of different subpopulations (componen...
Variance components estimation originated with estimating error variance in analysis of variance by ...
The technique of jackknife is applied to a general class of estimators. Considering a natural popula...
<p>The jackknife estimation of variance for the median, using the original measurement scale, has be...
The jackknife method, a resampling technique, has been widely used for statistical tests for years. ...
This paper focuses on a design-consistent regression estimator in which the “auxiliaries” are estima...
46 pages, 1 article*Detailed Derivations for Minque and Mivque Estimation of Variance Components fro...
This thesis presents the Jackknife Variance Estimator as a cost efficient alternative to the Bootstr...
We propose a jackknife variance estimator for the pop-ulation average from two, two-phase samples af...
Inference on the regression parameters in a heteroscedastic linear regression model with replication...
Includes bibliographical references.Many important estimators in statistics have the property that t...
The variance is the measure of spread from the center. Therefore, how to accurately estimate varianc...
The variance is the measure of spread from the center. Therefore, how to accurately estimate varianc...
We write a linear model in the form Y=Xβ+Uξ, where β is an unknown parameter and ξ is a hypothetical...
Quenouille has developed a procedure, later termed the jackknife by Tukey, for reducing the bias of ...
We consider data in which each observed subject belongs to one of different subpopulations (componen...
Variance components estimation originated with estimating error variance in analysis of variance by ...
The technique of jackknife is applied to a general class of estimators. Considering a natural popula...
<p>The jackknife estimation of variance for the median, using the original measurement scale, has be...
The jackknife method, a resampling technique, has been widely used for statistical tests for years. ...
This paper focuses on a design-consistent regression estimator in which the “auxiliaries” are estima...
46 pages, 1 article*Detailed Derivations for Minque and Mivque Estimation of Variance Components fro...