改进Kibria-Lukman型估计器:应用与仿真

Benedicta B Aladeitan, O. Adebimpe, K. Ayinde, A. Lukman
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引用次数: 0

摘要

线性回归模型中的普通最小二乘(OLS)方法长期以来广泛应用于不同领域,受多重共线性的严重影响。当存在多重共线性时,OLS估计往往表现出不稳定和不可靠的结果。当存在多重共线性时,岭回归估计量作为OLS估计量的替代品已被广泛接受。最近,Kibria和Lukman(2020)开发了KL估计器,并发现它优于脊估计器。在本研究中,我们修正了KL估计量,提出了一个新的估计量。新的估计量称为修正KL估计量。通过仿真研究和实际应用,比较了该估计器与现有估计器的性能。利用数据集进行理论比较,改进KL估计量与Ridge、Liu和KL估计量的MSE差异分别为92.0896、81.9774和338.9007。仿真研究和实际应用结果表明,以均方误差为准则,本文提出的估计器始终优于研究中考虑的其他估计器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Kibria-Lukman Type Estimator:Application and Simulation
The method of ordinary least square (OLS) in the linear regression model is widely used in different fields for quite some time, and it is grossly affected by multicollinearity. OLS estimator often exhibits unstable and unreliable results when there is multicollinearity. The ridge regression estimator had been widely accepted as a substitute to OLS estimator when there is multicollinearity. Recently, Kibria and Lukman (2020) developed the KL estimator and found it preferable to the ridge estimator. In this study, we modified the KL estimator to propose a new estimator. The new estimator is called the Modified KL estimator. Simulation study and real-life application were carried out to compare the performance of this new estimator and some other existing estimators. Theoretical comparison using data set showed MSE difference of 92.0896, 81.9774 and 338.9007 between the Modified KL estimator and the Ridge, Liu and KL estimators respectively. The simulation study and the real-life application results show that the proposed estimator consistently dominate other estimators considered in the study using the MSE as criterion.
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