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Local polynomial regression analysis of clustered data

机译:聚类数据的局部多项式回归分析

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This paper proposes a classical weighted least squares type of local polynomial smoothing for the analysis of clustered data, with the key idea of using generalised inverses of correlation matrices. The estimator has a simple closed-form expression. Simplicity is achieved also for nonparametric generalised linear models with arbitrary link function via a transformation. Our approach can be characterised by 'local observations with local variances', which yields intuitively correct results in the sense that correct/incorrect specification of within-cluster correlation has respective positiveegative effects. The approach is a natural extension of classical local polynomial smoothing. Consequently, existing theory can be largely carried over and important issues such as bandwidth selection can be tackled in the classical fashion. Moreover, the approach can handle various types of covariate, such as cluster-level, subject-level or partially cluster-level. Numerical studies support the theoretical results. The method is illustrated with a real example on luteinising hormone levels in cows.
机译:本文提出了一种经典的加权最小二乘类型的局部多项式平滑,用于聚类数据的分析,其关键思想是使用相关矩阵的广义逆。估计器具有一个简单的封闭式表达式。对于具有任意链接函数的非参数广义线性模型,也可以通过转换实现简单性。我们的方法可以通过“具有局部方差的局部观测”来表征,在正确/不正确的集群内相关性规范具有各自的积极/消极影响的意义上,这可以直观地得出正确的结果。该方法是经典局部多项式平滑的自然扩展。因此,现有的理论可以在很大程度上得到延续,并且诸如带宽选择之类的重要问题可以以经典方式解决。此外,该方法可以处理各种类型的协变量,例如聚类,主题或部分聚类。数值研究支持了理论结果。该方法以关于牛黄体激素水平的实际例子说明。

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