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Robust PC with wild bootstrap estimation of linear model in the presence of outliers, multicollinearity and heteroscedasticity error variance

机译:具有离群值,多重共线性和异方差误差方差的线性模型的野生自举估计的鲁棒PC

摘要

The regression model estimator is considered efficient if it is robust and resistant to the presence of heteroscedasticity variance, multicollinearity or unusual observations called outliers. However, in regard to these problems, the wild bootstrap and robust wild bootstrap are no longer efficient since they could not produce the smallest variance. Hence this research investigates the use of robust PC with wild bootstrap techniques on regression model as an estimator for real and simulation data in a situation where multicollinearity, heteroscedasticity and multiple outliers are present. This paper proposed a robust procedure based on the weighted residuals which combined the Tukey bisquare weighted function, principal component analysis (PCA) to remedy the multicollinearity problems, least trimmed squares (LTS) estimator, robust location and scale, and the wild bootstrap sampling procedure of Wu and Liu that remedy the heteroscedasticity error variance. RPCWBootWu and RPCWBootLiu were obtained through a modified version of RBootWu and RBootLiu. Finally, based on the real data and simulation study, the performance of the RPCWBootWu and RPCWBootLiu is compared with the existing RBootWu, RBootLiu and also with BootWu, BootLiu using the biased, RMSE and standard error. The numerical example and simulation study shows that the RPCWBootWu and RPCWBootLiu techniques have proven to be a good alternative estimator for regression model with lower standard error values.
机译:如果回归模型估计器具有鲁棒性并且可以抵抗异方差方差,多重共线性或异常值(称为离群值),则认为该模型有效。但是,对于这些问题,野生引导程序和健壮的野生引导程序不再有效,因为它们无法产生最小的方差。因此,本研究调查了在存在多重共线性,异方差和多个异常值的情况下,在回归模型上使用具有鲁棒自举技术的鲁棒PC作为真实和模拟数据的估计量的情况。本文提出了一种基于加权残差的鲁棒程序,该方法结合了Tukey双平方加权函数,主成分分析(PCA)来解决多重共线性问题,最小修剪平方(LTS)估计器,鲁棒位置和规模以及野外自举采样程序Wu和Liu的研究弥补了异方差误差方差。 RPCWBootWu和RPCWBootLiu是通过修改版本的RBootWu和RBootLiu获得的。最后,基于实际数据和仿真研究,将RPCWBootWu和RPCWBootLiu的性能与现有RBootWu,RBootLiu以及使用有偏差,RMSE和标准误差的BootWu,BootLiu进行了比较。数值示例和仿真研究表明,RPCWBootWu和RPCWBootLiu技术已被证明是具有较低标准误差值的回归模型的良好替代估计器。

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