A Jackknife Method for Estimation of Variance Components |
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Authors: | Christian Lavergne |
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Affiliation: | IMAG-Laboratoire de Modélisation et Calcul , Grenoble, France |
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Abstract: | This 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. |
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Keywords: | AMS classification Primary 62J05 62F10 secondary 62G09 |
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