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Alternative ridge robust regression estimator for dealing with collinear influential data points

机译:用于处理共线影响数据点的替代岭稳健回归估计器

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The multicollinearity in multiple linear regression models and the existence of influential data points are common problems. These problems exert undesirable effects on the least squares estimators. So, it is very important to introduce some alternative biased estimators of the robust ridge regression to overcome the influence of these problems simultaneously. In this paper, alternative biased robust regression estimator is defined by mixing the ridge estimation technique into the robust least median squares estimation to obtain the Ridge Least Median Squares (RLMS). The efficiency of the combined estimator (RLMS) is compared with some existing regression estimators, which namely, the Ordinary Least Squares (LS); Ridge Regression (RR) and Ridge Least Absolute Deviation (RLAD). The numerical results of this study show that, the RLMS regression estimator is more efficient than other estimators, based on, Bias and mean squared error criteria for many combinations of influential data points and degree of multicollinearity.
机译:多个线性回归模型中的多重共线性和有影响的数据点的存在是常见的问题。这些问题对最小二乘估计量产生了不良影响。因此,引入鲁棒岭回归的一些可替代的有偏估计量以同时克服这些问题的影响非常重要。在本文中,通过将岭估计技术与鲁棒最小中值平方估计混合,以获得岭最小中位数平方根(RLMS),定义了替代的偏置鲁棒回归估计器。将组合估计器(RLMS)的效率与一些现有的回归估计器(即普通最小二乘(LS))进行比较。岭回归(RR)和岭最小绝对偏差(RLAD)。这项研究的数值结果表明,对于影响数据点和多重共线性度的许多组合,基于偏差和均方误差标准,RLMS回归估计器比其他估计器更有效。

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