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On the performance of some new Liu parameters for the gamma regression model

机译:关于γ回归模型的一些新Liu参数的性能

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摘要

The maximum likelihood (ML) method is used to estimate the unknown Gamma regression (GR) coefficients. In the presence of multicollinearity, the variance of the ML method becomes overstated and the inference based on the ML method may not be trustworthy. To combat multicollinearity, the Liu estimator has been used. In this estimator, estimation of the Liu parameter d is an important problem. A few estimation methods are available in the literature for estimating such a parameter. This study has considered some of these methods and also proposed some new methods for estimation of the d. The Monte Carlo simulation study has been conducted to assess the performance of the proposed methods where the mean squared error (MSE) is considered as a performance criterion. Based on the Monte Carlo simulation and application results, it is shown that the Liu estimator is always superior to the ML and recommendation about which best Liu parameter should be used in the Liu estimator for the GR model is given.
机译:最大似然(ML)方法用于估计未知的Gamma回归(GR)系数。在存在多重共线性的情况下,ML方法的方差被夸大了,并且基于ML方法的推论可能不可信。为了对抗多重共线性,使用了Liu估计器。在此估计器中,对Liu参数d的估计是一个重要问题。在文献中有几种估计方法可用于估计这样的参数。这项研究考虑了其中一些方法,并提出了一些新的d估计方法。进行了蒙特卡洛模拟研究,以评估将均方误差(MSE)视为性能标准的方法的性能。根据蒙特卡罗仿真和应用结果,表明Liu估计器总是优于ML,并给出了在GR模型的Liu估计器中应使用哪个最佳Liu参数的建议。

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