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Magdy Nagy Ahmed Ramadan

Assistant Professor

Faculty member

كلية العلوم
College of Science, Building 4, Office 2B-28

Expected Bayesian estimation for exponential model based on simple step stress with Type-I hybrid censored data

Expected Bayesian estimation for exponential model based on simple step stress with Type-I hybrid censored data

The procedure of selecting the values of hyper-parameters for prior distributions in Bayesian estimate has produced many problems and has drawn the attention of many authors, therefore the expected Bayesian (E-Bayesian) estimation method to overcome these problems. These approaches are used based on the step-stress acceleration model under the Exponential Type-I hybrid censored data in this study. The values of the distribution parameters are derived. To compare the E-Bayesian estimates to the other estimates, a comparative study was conducted using the simulation research. Four different loss functions are used to generate the Bayesian and E-Bayesian estimators. In addition, three alternative hyper-parameter distributions were used in E-Bayesian estimation. Finally, a real-world data example is examined for demonstration and comparative purposes.

Publication Work Type
article
Publisher Name
aimspress
more of publication
publications

The procedure of selecting the values of hyper-parameters for prior distributions in Bayesian estimate has produced many problems and has drawn the attention of many authors, therefore the…

by M. Nagy1, M. H. Abu-Moussa, Adel Fahad Alrasheedi and A. Rabie
2022
Published in:
aimspress
publications

By observing the failure behavior of the recorded survival data, we aim to compare the different processing approaches or the effectiveness of the devices or systems applied in this nonparametric…

by M. E. Bakr, M. Nagy and Abdulhakim A. Al-Babtain
2022
Published in:
aimspress