Title of article :
Jackknifing K-L estimator in generalized linear models
Author/Authors :
Ali Hamad, Abed Department Of Economics - College of Administration and Economics - University of Anbar - Anbar, Iraq , Yahya Algamal, Zakariya Department of Statistics and Informatics - University of Mosul - Mosul, Iraq
Abstract :
It is a challenge in the real application when modelling the relationship between the response variable
and several explanatory variables when the existence of collinearity. Traditionally, in order to avoid
this issue, several shrinkage estimators are proposed. Among them is the Kibria and Lukman estimator
(K-L). In this study, a jackknifed version of the K-L estimator is proposed in the generalized
linear model that combines the Jackknife procedure with the K-L estimator to reduce the biasedness.
Our Monte Carlo simulation results and the real data application related to the inverse Gaussian
regression model suggest that the proposed estimator can bring significant improvement relative to
other competitor estimators, in terms of absolute bias and mean squared error.
Keywords :
Collinearity , K-L estimator , Inverse Gaussian regression model , Jackknife estimator , Monte Carlo simulation
Journal title :
International Journal of Nonlinear Analysis and Applications