A New Two-Parameter Estimator for the Poisson Regression Model

被引:2
|
作者
Yasin Asar
Aşır Genç
机构
[1] Necmettin Erbakan University,Department of Mathematics
[2] Selçuk University,Computer Sciences, Faculty of Science
关键词
Liu-type estimator; MSE; Monte Carlo simulation; Multicollinearity; Ridge estimator; Poisson regression; 62J07; 62F10;
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摘要
It is known that multicollinearity affects the maximum likelihood estimator (MLE) negatively when estimating the coefficients in Poisson regression. Namely, the variance of MLE inflates and the estimations become instable. Therefore, in this article we propose a new two-parameter estimator (TPE) and some methods to estimate these two parameters for the Poisson regression model when there is multicollinearity problem. Moreover, we conduct a Monte Carlo simulation to evaluate the performance of the estimators using mean squared error (MSE) criterion. We finally consider a real data application. The simulations results show that TPE outperforms MLE in almost all the situations considered in the simulation and it has a smaller MSE and smaller standard errors than MLE in the application.
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页码:793 / 803
页数:10
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