Title of article :
Jackknifed Liu-type Estimator in Poisson Regression Model
Author/Authors :
Alkhateeb, Ahmed Naziyah Department of Operation Research and Intelligent Techniques - University of Mosul - Mosul, Iraq , Algamal, Zakariya Yahya Department of Statistics and Informatics - College of Computer science and Mathematics - University of Mosul - Mosul, Iraq
Abstract :
The Liu estimator has consistently been demonstrated to be an attractive
shrinkage method for reducing the eects of multicollinearity. The Poisson regression
model is a well-known model in applications when the response variable consists of
count data. However, it is known that multicollinearity negatively aects the variance
of the maximum likelihood estimator (MLE) of the Poisson regression coecients.
To address this problem, a Poisson Liu estimator has been proposed by numerous
researchers. In this paper, a Jackknifed Liu-type Poisson estimator (JPLTE) is proposed
and derived. The idea behind the JPLTE is to decrease the shrinkage parameter
and, therefore, improve the resultant estimator by reducing the amount of bias. Our
Monte Carlo simulation results suggest that the JPLTE estimator can bring significant
improvements relative to other existing estimators. In addition, the results of a real
application demonstrate that the JPLTE estimator outperforms both the Poisson Liu
estimator and the maximum likelihood estimator in terms of predictive performance
Keywords :
Monte Carlo Simulation , Poisson Regression Model , Liu Estimator , Multicollinearity Shrinkage
Journal title :
Journal of the Iranian Statistical Society (JIRSS)