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The Comparison Between Several Robust Ridge Regression Estimators in the Presence of Multicollinearity and Multiple Outliers

机译:多元性和多个异常值存在下几个强大的脊回归估计的比较

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In the presence of multicollinearity and multiple outliers, statistical inference of linear regression model using ordinary least squares (OLS) estimators would be severely affected and produces misleading results. To overcome this, many approaches have been investigated. These include robust methods which were reported to be less sensitive to the presence of outliers. In addition, ridge regression technique was employed to tackle multicollinearity problem. In order to mitigate both problems, a combination of ridge regression and robust methods was discussed in this study. The superiority of this approach was examined when simultaneous presence of multicollinearity and multiple outliers occurred in multiple linear regression. This study aimed to look at the performance of several well-known robust estimators; M, MM, RIDGE and robust ridge regression estimators, namely Weighted Ridge M-estimator (WRM), Weighted Ridge MM (WRMM), Ridge MM (RMM), in such a situation. Results of the study showed that in the presence of simultaneous multicollinearity and multiple outliers (in both x and y-direction), the RMM and RIDGE are more or less similar in terms of superiority over the other estimators, regardless of the number of observation, level of collinearity and percentage of outliers used. However, when outliers occurred in only single direction (y-direction), the WRMM estimator is the most superior among the robust ridge regression estimators, by producing the least variance. In conclusion, the robust ridge regression is the best alternative as compared to robust and conventional least squares estimators when dealing with simultaneous presence of multicollinearity and outliers.
机译:在多型性和多个异常值存在下,使用普通最小二乘(OLS)估算器的线性回归模型的统计推断将受到严重影响并产生误导性结果。为了克服这一点,已经调查了许多方法。这些包括据报道的稳健方法对异常值的存在不太敏感。此外,采用岭回归技术来解决多元性问题。为了减轻这两个问题,在本研究中讨论了脊回归和鲁棒方法的组合。当同时存在多元性和多个异常值发生多元线性回归时,检查了这种方法的优越性。本研究旨在介绍几种知名稳健估计者的表现; M,MM,RIDGE和强大的脊回归估计器,即加权脊M估算器(WRM),加权脊MM(WRMM),脊MM(RMM),在这种情况下。研究结果表明,在同时的多色性和多个异常值(在X和Y方向上),无论观察的数量如何,RMM和RIDG在其他估计器上的优越性方面都或多或少类似。使用的共同性水平和使用的异常值的百分比。然而,当异常值仅发生在单个方向(Y方向)时,WRMM估计器是鲁棒岭回归估算中最优越的,通过产生最小的方差。总之,与稳健和传统最小二乘估计相比,鲁棒岭回归是在处理多色性和异常值的同时存在时相比的最佳替代方案。

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