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Doubly robust estimation of generalized partial linear models for longitudinal data with dropouts

机译:具有辍学的纵向数据的广义部分线性模型的双重稳健估计

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摘要

We develop a doubly robust estimation of generalized partial linear models for longitudinal data with dropouts. Our method extends the highly efficient aggregate unbiased estimating function approach proposed in Qu et al. (2010) to a doubly robust one in the sense that under missing at random (MAR), our estimator is consistent when either the linear conditional mean condition is satisfied or a model for the dropout process is correctly specified. We begin with a generalized linear model for the marginal mean, and then move forward to a generalized partial linear model, allowing for nonparametric covariate effect by using the regression spline smoothing approximation. We establish the asymptotic theory for the proposed method and use simulation studies to compare its finite sample performance with that of Qu's method, the complete-case generalized estimating equation (GEE) and the inverse-probability weighted GEE. The proposed method is finally illustrated using data from a longitudinal cohort study.
机译:我们为具有辍学的纵向数据开发了对广义部分线性模型的双重稳健估计。我们的方法扩展了Qu等人提出的高效集合无偏的估计函数方法。 (2010)在缺少随机(MAR)的缺失下的感觉中,我们的估计器在满足线性条件平均条件或正确指定辍学过程的模型时,我们的估计器是一致的。我们从一个广义的线性模型开始用于边际平均值,然后向前移动到广义部分线性模型,通过使用回归花键平滑近似来允许非参数协变量。我们建立了渐近理论,为提出的方法和使用模拟研究,将其与Qu方法的有限样本性能进行比较,完整的情况一般化估计方程(GEE)和逆概率加权GEE。最终使用来自纵向队列研究的数据来说明该方法。

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