Using Standard Error to Find the Best Robust Regression in Presence of Multicollinearity and Outliers

K. Pati
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引用次数: 5

Abstract

Multicollinearity and outliers are seen as one of the most common problems in the models of multiple linear regression. In the present paper, a robust ridge regression is proposed on the basis of weighted ridge least trimmed squares (WRLTS). The suggested method WRLTS is compared with the following methods of estimation: The Ordinary Least Squares (OLS), Ridge Regression (RR), Robust Ridge Regression (RRR), such as Ridge Least Median Squares (RLMS), Ridge Least Trimmed Squares (RLTS), regression which is based on LTS estimator and Weighted Ridge (WRID) as far as Standard Error is concerned. For the sake of illustration of the suggested method, two examples are given through the use of R programming to test the data. Both examples have shown that WRLTS is the best estimator in comparison to the other methods in the present paper.
用标准误差寻找存在多重共线性和异常值的最佳稳健回归
多重共线性和异常值是多元线性回归模型中最常见的问题之一。本文提出了一种基于加权脊最小裁剪二乘的鲁棒脊回归方法。将WRLTS方法与普通最小二乘(OLS)、岭回归(RR)、鲁棒岭回归(RRR),如岭最小中值二乘(RLMS)、岭最小裁剪二乘(RLTS)、基于LTS估计量的回归和加权岭(WRID)的标准误差进行了比较。为了说明所建议的方法,给出了两个例子,通过使用R编程来测试数据。两个例子都表明,与本文的其他方法相比,WRLTS是最好的估计器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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