On the analysis of number of deaths due to Covid −19 outbreak data using a new class of distributions
Author(s) -
Tabassum Naz Sindhu,
Anum Shafiq,
Qasem M. AlMdallal
Publication year - 2020
Publication title -
results in physics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.743
H-Index - 56
ISSN - 2211-3797
DOI - 10.1016/j.rinp.2020.103747
Subject(s) - gumbel distribution , estimator , parametric statistics , computer science , bayesian probability , parametric model , quantile , transformation (genetics) , hazard , statistics , mathematics , econometrics , extreme value theory , chemistry , gene , biochemistry , organic chemistry
In this article, we develop a generator to suggest a generalization of the Gumbel type-II model known as generalized log-exponential transformation of Gumbel Type-II (GLET-GTII), which extends a more flexible model for modeling life data. Owing to basic transformation containing an extra parameter, every existing lifetime model can be made more flexible with suggested development. Some specific statistical attributes of the GLET-GTII are investigated, such as quantiles, uncertainty measures, survival function, moments, reliability, and hazard function etc. We describe two methods of parametric estimations of GLET-GTII discussed by using maximum likelihood estimators and Bayesian paradigm. The Monte Carlo simulation analysis shows that estimators are consistent. Two real life implementations are performed to scrutinize the suitability of our current strategy. These real life data is related to Infectious diseases (COVID-19). These applications identify that by using the current approach, our proposed model outperforms than other well known existing models available in the literature.
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