Estimation of the Parameters of the Gamma Geometric Process
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Date
2022
Journal Title
Journal ISSN
Volume Title
Publisher
Taylor & Francis Ltd
Abstract
There is no doubt that finding the estimators of model parameters accurately and efficiently is very important in many fields. In this study, we obtain the explicit estimators of the unknown model parameters in the gamma geometric process (GP) via the modified maximum likelihood (MML) methodology. These estimators are as efficient as maximum likelihood (ML) estimators. The marginal and joint asymptotic distributions of the MML estimators are also derived and efficiency comparisons between ML and MML estimators are made through an extensive Monte Carlo simulations. Moreover, a real data example is considered to illustrate the performances of the MML estimators together with their ML counterparts. According to simulation results, the performances of MML and ML estimators are close to each other even for small sample sizes.
Description
Guven, Gamze/0000-0002-8821-3179
ORCID
Keywords
Geometric Process, Gamma Distribution, Modified Maximum Likelihood, Asymptotic Normality, Monte Carlo Simulation
Turkish CoHE Thesis Center URL
WoS Q
Q3
Scopus Q
Q3
Source
Volume
92
Issue
12
Start Page
2525
End Page
2535