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Kernel-based Generalized Cross-validation in Non-parametric Mixed-effect Models

机译:非参数混合效应模型中基于核的广义交叉验证

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Although generalized cross-validation (GCV) has been frequently applied to select bandwidth when kernel methods are used to estimate non-parametric mixed-effect models in which non-parametric mean functions are used to model covariate effects, and additive random effects are applied to account for overdispersion and correlation, the optimality of the GCV has not yet been explored. In this article, we construct a kernel estimator of the non-parametric mean function. An equivalence between the kernel estimator and a weighted least square type estimator is provided, and the optimality of the GCV-based bandwidth is investigated. The theoretical derivations also show that kernel-based and spline-based GCV give very similar asymptotic results. This provides us with a solid base to use kernel estimation for mixed-effect models. Simulation studies are undertaken to investigate the empirical performance of the GCV. A real data example is analysed for illustration.
机译:尽管在使用核方法估计非参数混合效应模型(其中使用非参数均值函数对协变量效应进行建模,并且将加性随机效应应用于)的非参数混合效应模型时,广义交叉验证(GCV)经常被用于选择带宽。考虑到过度分散和相关性,GCV的最优性尚未探索。在本文中,我们构造了非参数均值函数的核估计器。提供了核估计器和加权最小二乘估计器之间的等价关系,并研究了基于GCV的带宽的最优性。理论推导还表明,基于核和基于样条的GCV给出了非常相似的渐近结果。这为我们提供了坚实的基础,可以将核估计用于混合效应模型。进行模拟研究以调查GCV的经验性能。分析一个真实的数据示例以进行说明。

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