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A type of restricted maximum likelihood estimator of variance components in generalised linear mixed models

机译:广义线性混合模型中方差分量的一种受限最大似然估计

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The maximum likelihood estimator of the variance components in a linear model can be biased downwards. Restricted maximum likelihood (REML) corrects this problem by using the likelihood of a set of residual contrasts and is generally considered superior. However, this original restricted maximum likelihood definition does not directly extend beyond linear models. We propose a REML-type estimator for generalised linear mixed models by correcting the bias in the profile score function of the variance components. The proposed estimator has the same consistency properties as the maximum likelihood estimator if the number of parameters in the mean and variance components models remains fixed. However, the estimator of the variance components has a smaller finite sample bias. A simulation study with a logistic mixed model shows that the proposed estimator is effective in correcting the downward bias in the maximum likelihood estimator. [References: 24]
机译:线性模型中方差分量的最大似然估计值可以向下偏置。受限最大似然(REML)通过使用一组残差对比的似然来纠正此问题,通常被认为是优越的。但是,这种原始的受限最大似然定义并没有直接超出线性模型。通过校正方差分量的轮廓得分函数中的偏差,我们为广义线性混合模型提出了REML型估计器。如果均值和方差分量模型中参数的数量保持固定,则所提出的估计器具有与最大似然估计器相同的一致性属性。但是,方差分量的估计量具有较小的有限样本偏差。对数混合模型的仿真研究表明,所提出的估计器可以有效地校正最大似然估计器中的向下偏差。 [参考:24]

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