Department of Physical Sciences, (Mathematics) Landmark University, Omu-Aran, Kwara State, +234, Nigeria.
SDG 13 (Climate Action), Landmark University, Omu-Aran, Kwara State, Nigeria.
F1000Res. 2021 Jul 8;10:548. doi: 10.12688/f1000research.53987.2. eCollection 2021.
Multicollinearity greatly affects the Maximum Likelihood Estimator (MLE) efficiency in both the linear regression model and the generalized linear model. Alternative estimators to the MLE include the ridge estimator, the Liu estimator and the Kibria-Lukman (KL) estimator, though literature shows that the KL estimator is preferred. Therefore, this study sought to modify the KL estimator to mitigate the Poisson Regression Model with multicollinearity. A simulation study and a real-life study was carried out and the performance of the new estimator was compared with some of the existing estimators. The simulation result showed the new estimator performed more efficiently than the MLE, Poisson Ridge Regression Estimator (PRE), Poisson Liu Estimator (PLE) and the Poisson KL (PKL) estimators. The real-life application also agreed with the simulation result. In general, the new estimator performed more efficiently than the MLE, PRE, PLE and the PKL when multicollinearity was present.
多重共线性极大地影响了线性回归模型和广义线性模型中的最大似然估计(MLE)效率。MLE 的替代估计包括岭估计、刘估计和 Kibria-Lukman(KL)估计,尽管文献表明 KL 估计更受欢迎。因此,本研究试图修改 KL 估计以减轻具有多重共线性的泊松回归模型。进行了一项模拟研究和一项实际研究,并将新估计量的性能与一些现有估计量进行了比较。模拟结果表明,新估计量的性能比 MLE、泊松岭回归估计量(PRE)、泊松刘估计量(PLE)和泊松 KL(PKL)估计量更有效。实际应用也与模拟结果一致。一般来说,当存在多重共线性时,新估计量的性能优于 MLE、PRE、PLE 和 PKL。