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On a New Modification of the Weibull Model with Classical and Bayesian Analysis

Author

Listed:
  • Yen Liang Tung
  • Zubair Ahmad
  • Omid Kharazmi
  • Clement Boateng Ampadu
  • E.H. Hafez
  • Sh. A.M. Mubarak
  • Ahmed Mostafa Khalil

Abstract

Modelling data in applied areas particularly in reliability engineering is a prominent research topic. Statistical models play a vital role in modelling reliability data and are useful for further decision-making policies. In this paper, we study a new class of distributions with one additional shape parameter, called a new generalized exponential-X family. Some of its properties are taken into account. The maximum likelihood approach is adopted to obtain the estimates of the model parameters. For assessing the performance of these estimators, a comprehensive Monte Carlo simulation study is carried out. The usefulness of the proposed family is demonstrated by means of a real-life application representing the failure times of electronic components. The fitted results show that the new generalized exponential-X family provides a close fit to data. Finally, considering the failure times data, the Bayesian analysis and performance of Gibbs sampling are discussed. The diagnostics measures such as the Raftery–Lewis, Geweke, and Gelman–Rubin are applied to check the convergence of the algorithm.

Suggested Citation

  • Yen Liang Tung & Zubair Ahmad & Omid Kharazmi & Clement Boateng Ampadu & E.H. Hafez & Sh. A.M. Mubarak & Ahmed Mostafa Khalil, 2021. "On a New Modification of the Weibull Model with Classical and Bayesian Analysis," Complexity, Hindawi, vol. 2021, pages 1-19, March.
  • Handle: RePEc:hin:complx:5574112
    DOI: 10.1155/2021/5574112
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