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An improved approximation to the precision of fixed effects from restricted maximum likelihood

机译:受限制的最大似然比,可以更好地逼近固定效果的精度

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摘要

An approximate small sample variance estimator for fixed effects from the multivariate normal linear model, together with appropriate inference tools based on a scaled F pivot, is now well established in practice and there is a growing literature on its properties in a variety of settings. Although effective under linear covariance structures, there are examples of nonlinear structures for which it does not perform as well. The cause of this problem is shown to be a missing term in the underlying Taylor series expansion which accommodates the bias in the estimators of the parameters of the covariance structure. The form of this missing term is derived, and then used to adjust the small sample variance estimator. The behaviour of the resulting estimator is explored in terms of invariance under transformation of the covariance parameters and also using a simulation study. It is seen to perform successfully in the way predicted from its derivation.
机译:如今,在实践中已经很好地建立了基于多元正态线性模型的固定效应的近似小样本方差估计器,以及基于比例F轴的适当推理工具,并且在各种情况下有关其性质的文献也越来越多。尽管在线性协方差结构下有效,但仍有一些非线性结构表现不佳的示例。在底层泰勒级数展开中,该问题的原因表明是缺少项,该展开项容纳了协方差结构的参数估计量中的偏差。导出此缺失项的形式,然后将其用于调整小样本方差估计量。根据协方差参数转换后的不变性,并使用仿真研究,探讨了所得估计量的行为。可以看到它以从派生中预测的方式成功执行。

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