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On the estimation of variance parameters in non-standard generalised linear mixed models: application to penalised smoothing

机译:关于非标准广义线性混合模型中方差参数的估计:在惩罚平滑中的应用

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摘要

We present a novel method for the estimation of variance parameters in generalised linear mixed models. The method has its roots in Harville (J Am Stat Assoc 72(358):320-338, 1977)'s work, but it is able to deal with models that have a precision matrix for the random effect vector that is linear in the inverse of the variance parameters (i.e., the precision parameters). We call the method SOP (separation of overlapping precision matrices). SOP is based on applying the method of successive approximations to easy-to-compute estimate updates of the variance parameters. These estimate updates have an appealing form: they are the ratio of a (weighted) sum of squares to a quantity related to effective degrees of freedom. We provide the sufficient and necessary conditions for these estimates to be strictly positive. An important application field of SOP is penalised regression estimation of models where multiple quadratic penalties act on the same regression coefficients. We discuss in detail two of those models: penalised splines for locally adaptive smoothness and for hierarchical curve data. Several data examples in these settings are presented.
机译:我们提出了一种新的方法来估计广义线性混合模型中的方差参数。该方法起源于Harville(J Am Stat Assoc 72(358):320-338,1977)的工作,但是它能够处理在随机效应向量中具有线性精度矩阵的模型。方差参数(即精度参数)的倒数。我们称该方法为SOP(重叠的精度矩阵的分离)。 SOP基于将逐次逼近方法应用于方差参数的易于计算的估计更新。这些估算更新具有一种吸引人的形式:它们是(加权)平方和与与有效自由度有关的数量的比率。我们提供了充分必要的条件,使这些估计严格为正。 SOP的重要应用领域是模型的惩罚回归估计,其中多个二次惩罚作用于相同的回归系数。我们将详细讨论其中的两个模型:局部局部平滑度和分层曲线数据的惩罚样条线。给出了这些设置中的几个数据示例。

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