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Estimation Parameters Using Bisquare Weighted Robust Ridge Regression BRLTS Estimator in the Presence of Multicollinearity and Outliers

机译:使用Bisquare加权强大的RIDGE回归BRLTS估算器的估计参数在存在多色性和异常值

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This study presents an improvement to robust ridge regression estimator. We proposed two methods Bisquare ridge least trimmed squares (BRLTS) and Bisquare ridge least absolute value (BRLAV) based on ridge least trimmed squares (RLTS) and ridge least absolute value (RLAV), respectively. We compared these methods with existing estimators, namely ordinary least squares (OLS) and Huber ridge regression (HRID) using three criteria: Bias, Root Mean Square Error (RMSE) and Standard Error (SE) to estimate the parameters coefficients. The results of Bisquare ridge least trimmed squares (BRLTS) and Bisquare ridge least absolute value (BRLAV) are compared with existing methods using real data and simulation study. The empirical evidence shows that the results obtain from the BRLTS are the best among the three estimators followed by BRLAV with the least value of the RMSE for the different disturbance distributions and degrees of multicollinearity.
机译:本研究提出了强大的脊回归估计器的改进。我们提出了两种方法Bisquare Ridge最小修整的正方形(BRLTS)和Bisquare脊的基于Bisquare Ride最少的绝对值(BRLAV),分别分别基于Ride最小调整的平方(RLT)和脊不列义绝对值(RLAV)。我们将这些方法与现有估计器进行比较,即使用三个标准的普通最小二乘(OLS)和Huber Ridge回归(Hrid):偏差,均匀平方误差(RMSE)和标准错误(SE)来估计参数系数。将Bisquare Ridge最小修整正方形(BRLTS)和Bisquare Ridge最不绝对值(BRLAV)的结果与使用真实数据和仿真研究的现有方法进行比较。经验证据表明,从BRLTS获得的结果是三个估计器中最好的,其次是BRLAV,具有不同扰动分布和多元性程度的RMSE的最小值。

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