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Robust estimation of generalized partially linear model for longitudinal data with dropouts

机译:具有辍学的纵向数据广义部分线性模型的鲁棒估计

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In this paper, we study the robust estimation of generalized partially linear models (GPLMs) for longitudinal data with dropouts. We aim at achieving robustness against outliers. To this end, a weighted likelihood method is first proposed to obtain the robust estimation of the parameters involved in the dropout model for describing the missing process. Then, a robust inverse probability-weighted generalized estimating equation is developed to achieve robust estimation of the mean model. To approximate the nonparametric function in the GPLM, a regression spline smoothing method is adopted which can linearize the nonparametric function such that statistical inference can be conducted operationally as if a generalized linear model was used. The asymptotic properties of the proposed estimator are established under some regularity conditions, and simulation studies show the robustness of the proposed estimator. In the end, the proposed method is applied to analyze a real data set.
机译:在本文中,我们研究了通过辍学的纵向数据的广义部分线性模型(GPLMS)的鲁棒估计。 我们的目标是实现对异常值的稳健性。 为此,首先提出加权似然方法以获得用于描述缺失过程的丢弃模型中所涉及的参数的稳健估计。 然后,开发了一种稳健的逆概率加权的广义估计方程,以实现平均模型的稳健估计。 为了近似GPLM中的非参数函数,采用回归花键平滑方法,其可以线性化非参数函数,使得可以操作地进行统计推断,好像使用了广义的线性模型一样。 建议估计人的渐近性质在一些规律性条件下建立,仿真研究表明提出的估算者的鲁棒性。 最后,应用了该方法来分析真实数据集。

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