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A new Liu-type estimator for the Inverse Gaussian Regression Model

机译:逆高斯回归模型的新刘型估计

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The Inverse Gaussian Regression Model (IGRM) is used when the response variable is positively skewed and follows the inverse Gaussian distribution. In this article, we propose a Liu-type estimator to combat multicollinearity in the IGRM. The variance of the Maximum Likelihood Estimator (MLE) is overstated due to the presence of severe multicollinearity. Moreover, some estimation methods are suggested to estimate the optimal value of the shrinkage parameter. The performance of the proposed estimator is compared with the MLE and some other existing estimators in the sense of mean squared error through Monte Carlo simulation and different real-life applications. Under certain conditions, it is concluded that the proposed estimator is superior to the MLE, ridge, and Liu estimator.
机译:当响应变量正偏斜并遵循反向高斯分布时,使用逆高斯回归模型(IGRM)。在本文中,我们提出了一种刘型估算器来打击IGRM中的多型性。由于存在严重的多色性,最大似然估计器(MLE)的变化夸大了。此外,建议一些估计方法来估计收缩参数的最佳值。通过Monte Carlo仿真和不同的现实寿命应用,将所提出的估计器的性能与MLE和其他一些现有估计进行比较。在某些条件下,拟议的估算者得出结论,拟议的估算者优于MLE,RIDGE和LIU估算器。

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