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  1.  24
    Marshall–Olkin Alpha Power Weibull Distribution: Different Methods of Estimation Based on Type-I and Type-II Censoring.Ehab M. Almetwally, Mohamed A. H. Sabry, Randa Alharbi, Dalia Alnagar, Sh A. M. Mubarak & E. H. Hafez - 2021 - Complexity 2021:1-18.
    This paper introduces the new novel four-parameter Weibull distribution named as the Marshall–Olkin alpha power Weibull distribution. Some statistical properties of the distribution are examined. Based on Type-I censored and Type-II censored samples, maximum likelihood estimation, maximum product spacing, and Bayesian estimation for the MOAPW distribution parameters are discussed. Numerical analysis using real data sets and Monte Carlo simulation are accomplished to compare various estimation methods. This novel model’s supremacy upon some famous distributions is explained using two real data sets (...)
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  2.  59
    Most Effective Sampling Scheme for Prediction of Stationary Stochastic Processes.Mohammad Mehdi Saber, Zohreh Shishebor, M. M. Abd El Raouf, E. H. Hafez & Ramy Aldallal - 2022 - Complexity 2022:1-14.
    The problem of finding optimal sampling schemes has been resolved in two models. The novelty of this study lies in its cost efficiency, specifically, for the applied problems with expensive sampling process. In discussed models, we show that some observations counteract other ones in prediction mechanism. The autocovariance function of underlying process causes mentioned result. Our interesting result is that, although removing neutralizing observations convert sampling scheme to nonredundant case, it causes to worse prediction. A simulation study confirms this matter, (...)
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  3.  13
    The Weibull Generalized Exponential Distribution with Censored Sample: Estimation and Application on Real Data.Hisham M. Almongy, Ehab M. Almetwally, Randa Alharbi, Dalia Alnagar, E. H. Hafez & Marwa M. Mohie El-Din - 2021 - Complexity 2021:1-15.
    This paper is concerned with the estimation of the Weibull generalized exponential distribution parameters based on the adaptive Type-II progressive censored sample. Maximum likelihood estimation, maximum product spacing, and Bayesian estimation based on Markov chain Monte Carlo methods have been determined to find the best estimation method. The Monte Carlo simulation is used to compare the three methods of estimation based on the ATIIP-censored sample, and also, we made a bootstrap confidence interval estimation. We will analyze data related to the (...)
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  4.  17
    On a New Modification of the Weibull Model with Classical and Bayesian Analysis.Yen Liang Tung, Zubair Ahmad, Omid Kharazmi, Clement Boateng Ampadu, E. H. Hafez & Sh A. M. Mubarak - 2021 - Complexity 2021:1-19.
    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, (...)
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  5.  24
    A New Class of Heavy-Tailed Distributions: Modeling and Simulating Actuarial Measures.Jin Zhao, Zubair Ahmad, Eisa Mahmoudi, E. H. Hafez & Marwa M. Mohie El-Din - 2021 - Complexity 2021:1-18.
    Statistical distributions play a prominent role for modeling data in applied fields, particularly in actuarial, financial sciences, and risk management fields. Among the statistical distributions, the heavy-tailed distributions have proven the best choice to use for modeling heavy-tailed financial data. The actuaries are often in search of such types of distributions to provide the best description of the actuarial and financial data. This study presents a new power transformation to introduce a new family of heavy-tailed distributions useful for modeling heavy-tailed (...)
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