Title of article :
Jackknifed Liu-type estimator in the negative binomial regression model
Author/Authors :
Myasar Jabur, Dhafer Northern Technical University, Mosul, Iraq , Khazaal Rashad, Nadwa Department of Management Information Systems - University of Mosul, Mosul, Iraq , Yahya Algamal, Zakariya Department of Statistics and Informatics - College of Computer science and Mathematics - University of Mosul, Mosul, Iraq
Pages :
10
From page :
2675
To page :
2684
Abstract :
The Liu estimator has been consistently demonstrated to be an attractive shrinkage method to reduce the effects of Inter-correlated (multicollinearity). The negative binomial regression model is a well-known model in the application when the response variable is non-negative integers or counts. However, it is known that multicollinearity negatively affects the variance of the maximum likelihood estimator of the negative binomial coefficients. To overcome this problem, a negative binomial Liu estimator has been proposed by numerous researchers. In this paper, a Jackknifed Liu-type negative binomial estimator (JNBLTE) is proposed and derived. The idea behind the JNBLTE is to decrease the shrinkage parameter and, therefore, the resultant estimator can be better with a small amount of bias. Our Monte Carlo simulation results suggest that the JNBLTE estimator can bring significant improvement relative to other existing estimators. In addition, the real application results demonstrate that the JNBLTE estimator outperforms both the negative binomial Liu estimator and maximum likelihood estimators in terms of predictive performance.
Keywords :
Multicollinearity , Liu estimator , negative binomial regression model , shrinkage , Monte Carlo simulation
Journal title :
International Journal of Nonlinear Analysis and Applications
Serial Year :
2022
Record number :
2713836
Link To Document :
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