Volume 23 , Issue 1 , PP: 273-286, 2024 | Cite this article as | XML | Html | PDF | Full Length Article
Hanaa Saad M. Shebib 1 * , Rawaa S. AL-Saffar 2
Doi: https://doi.org/10.54216/IJNS.230124
In this article, we used approximate methods to obtain Bayes method estimations for the shape and scale parameters of the generalized exponential distribution, as three approximation methods were employed: Lindley approximation and neutrosophic Lindley approximation, Gibbs sampling and neutrosophic Gibbs sampling, the most important samples based on the gamma informative prior under the squared error loss function. Through different simulation experiments a comparison was made between those estimators of these three approximate methods, from the simulation results we found a relative preference for the important sampling method over the other two methods. The results of simulation experiments were also confirmed by applying these approximate methods to real data representing the operating times of one of the machines of the publishing, printing, and translation house in Baghdad. On the other hand, we apply the same method to the neutrosophic exponential distribution, and the results will be compared to the classical case.
Generalized exponential distribution , neutrosophic exponential distribution , approximation , Bayes method.
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