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Smoothing combined estimating equations in quantile regression for longitudinal data

机译:纵向数据分位数回归中的平滑组合估计方程

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Quantile regression has become a powerful complement to the usual mean regression. A simple approach to use quantile regression in marginal analysis of longitudinal data is to assume working independence. However, this may incur potential efficiency loss. On the other hand, correctly specifying a working correlation in quantile regression can be difficult. We propose a new quantile regression model by combining multiple sets of unbiased estimating equations. This approach can account for correlations between the repeated measurements and produce more efficient estimates. Because the objective function is discrete and non-convex, we propose induced smoothing for fast and accurate computation of the parameter estimates, as well as their asymptotic covariance, using Newton-Raphson iteration. We further develop a robust quantile rank score test for hypothesis testing. We show that the resulting estimate is asymptotically normal and more efficient than the simple estimate using working independence. Extensive simulations and a real data analysis show the usefulness of the method.
机译:分位数回归已成为通常均值回归的有力补充。在纵向数据的边际分析中使用分位数回归的一种简单方法是假定工作独立性。但是,这可能会导致潜在的效率损失。另一方面,在分位数回归中正确指定工作相关性可能很困难。通过组合多组无偏估计方程,我们提出了一个新的分位数回归模型。这种方法可以解决重复测量之间的相关性,并产生更有效的估计。由于目标函数是离散且非凸的,因此我们建议使用Newton-Raphson迭代对参数估计值及其渐近协方差进行感应平滑,以进行快速,准确的计算。我们进一步开发了用于假设检验的稳健的分位数等级分数检验。我们表明,所得的估计比使用工作独立性的简单估计渐近正常,效率更高。大量的仿真和真实的数据分析证明了该方法的有效性。

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