Univariate Probability-G Classes for Scattered Samples under Different Forms of Hazard: Continuous and Discrete Version with Their Inferences Tests

Mohamed S. Eliwa, Muhammad H. Tahir, Muhammad A. Hussain, Bader Almohaimeed, Afrah Al-Bossly, Mahmoud El-Morshedy

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

In this paper, we define a new generator to propose continuous as well as discrete families (or classes) of distributions. This generator is used for the DAL model (acronym of the last names of the authors, Dimitrakopoulou, Adamidis, and Loukas). This newly proposed family may be called the new odd DAL (NODAL) G-class or alternate odd DAL G-class of distributions. We developed both a continuous as well as discrete version of this new odd DAL G-class. Some mathematical and statistical properties of these new G-classes are listed. The estimation of the parameters is discussed. Some structural properties of two special models of these classes are described. The introduced generators can be effectively applied to discuss and analyze the different forms of failure rates including decreasing, increasing, bathtub, and J-shaped, among others. Moreover, the two generators can be used to discuss asymmetric and symmetric data under different forms of kurtosis. A Monte Carlo simulation study is reported to assess the performance of the maximum likelihood estimators of these new models. Some real-life data sets (air conditioning, flood discharges, kidney cysts) are analyzed to show that these newly proposed models perform better as compared to well-established competitive models.

Original languageEnglish
Article number2929
JournalMathematics
Volume11
Issue number13
DOIs
StatePublished - Jul 2023

Keywords

  • comparative study
  • computer simulation
  • discrete generators
  • dispersion phenomena
  • estimation
  • failure analysis
  • odd G-class
  • statistical model
  • statistics and numerical data

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