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Bootstrap methods for bias correction and confidence interval estimation for nonlinear quantile regression of longitudinal data

机译:用于纵向数据的非线性分位数回归的偏差校正和置信区间估计的Bootstrap方法

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摘要

This paper examines the use of bootstrapping for bias correction and calculation of confidence intervals (CIs) for a weighted nonlinear quantile regression estimator adjusted to the case of longitudinal data. Different weights and types of CIs are used and compared by computer simulation using a logistic growth function and error terms following an AR(1) model. The results indicate that bias correction reduces the bias of a point estimator but fails for CI calculations. A bootstrap percentile method and a normal approximation method perform well for two weights when used without bias correction. Taking both coverage and lengths of CIs into consideration, a non-bias-corrected percentile method with an unweighted estimator performs best.
机译:本文研究了使用自举进行偏差校正和针对纵向数据情况调整后的加权非线性分位数回归估计量的置信区间(CI)的计算。使用不同的权重和类型的配置项,并通过遵循Logistic增长函数和遵循AR(1)模型的误差项的计算机模拟来进行比较。结果表明,偏差校正减少了点估计量的偏差,但对于CI计算却失败了。在不使用偏差校正的情况下,自举百分位数法和法线逼近法对于两个权重的效果很好。考虑到CI的覆盖范围和长度,采用不加权估计量的非偏置校正百分位数方法效果最佳。

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