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Modified Least Trimmed Quantile Regression to Overcome Effects of Leverage Points

机译:修改了最小修剪分位数回归以克服杠杆点的影响

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摘要

Quantile regression estimates are robust for outliers inydirection but are sensitive to leverage points. The least trimmed quantile regression (LTQReg) method is put forward to overcome the effect of leverage points. The LTQReg method trims higher residuals based on trimming percentage specified by the data. However, leverage points do not always produce high residuals, and hence, the trimming percentage should be specified based on the ratio of contamination, not determined by a researcher. In this paper, we propose a modified least trimmed quantile regression method based on reweighted least trimmed squares. Robust Mahalanobis' distance and GM6 weights based on Gervini and Yohai's (2003) cutoff points are employed to determine the trimming percentage and to detect leverage points. A simulation study and real data are considered to investigate the performance of our proposed methods.
机译:分位数回归估计值对于异常值是稳健的,但对杠杆点很敏感。为了克服杠杆点的影响,提出了最小修剪分位数回归(LTQReg)方法。LTQReg 方法根据数据指定的修整百分比修剪更高的残差。然而,杠杆点并不总是产生高残留物,因此,修剪百分比应根据污染比率来指定,而不是由研究人员确定。在本文中,我们提出了一种基于重新加权最小修剪平方的改进最小修剪分位数回归方法。基于Gervini和Yohai(2003)截止点的稳健Mahalanobis距离和GM6权重用于确定修剪百分比并检测杠杆点。通过仿真研究和实际数据,研究了所提方法的性能。

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