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首页> 外文期刊>Metrika: International Journal for Theoretical and Applied Statistics >Polynomial spline estimation for generalized varying coefficient partially linear models with a diverging number of components
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Polynomial spline estimation for generalized varying coefficient partially linear models with a diverging number of components

机译:分量数目不同的广义变系数部分线性模型的多项式样条估计

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摘要

Generalized varying coefficient partially linear models are a flexible class of semiparametric models that deal with data with different types of responses. In this paper, we focus on polynomial spline estimator as a computationally easier alternative to the more commonly used local polynomial regression approach, since one can directly take advantage of many existing implementations for generalized linear models. Furthermore, motivated by the high dimensionality characteristics that accompany many modern data sets nowadays, we investigate its asymptotic properties when both the number of nonparametric and the number of parametric components grows with, but is still smaller than, the sample size. Simulations and a real data example are used to illustrate our proposal.
机译:广义变化系数部分线性模型是半参数模型的灵活类别,用于处理具有不同类型响应的数据。在本文中,我们将多项式样条估计器作为一种更易于计算的替代方法,代替更常用的局部多项式回归方法,因为人们可以直接利用广义线性模型的许多现有实现方法。此外,受当今许多现代数据集所具有的高维特征的启发,当非参数的数量和参数分量的数量都随样本大小增长但仍小于样本大小时,我们研究其渐近性质。仿真和实际数据示例用于说明我们的建议。

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