Title of article :
Theory and application of the power Ailamujia distribution
Author/Authors :
Jamal, Farrukh Department of Statistics - Govt. S.A Postgraduate College Dera Nawab Sahib, Bahawalpur, Punjab, Pakistan , Chesneau, Christophe Universite' de Caen Normandie - LMNO, Campus II, Science 3, Caen, France , Aidi, Khaoula Laboratory of probability and statistics LaPS - University Badji Mokhtar-Annaba, Algeria , Ali, Aqib Department of Computer Science and IT - GLIM institute of modern studies Bahawalpur, Bahawalpur, Punjab, Pakistan
Pages :
23
From page :
391
To page :
413
Abstract :
Statistical modeling is constantly in demand for simple and flexible probability distributions. We are helping to meet this demand by proposing a new candidate extending the standard Ailamujia distribution, called the power Ailamujia distribution. The idea is to extend the adaptability of the Ailamujia distribution through the use of the power transform, introducing a new shape parameter in its definition. In particular, the new parameter is able to produce original non-monotonic shapes for the main functions that are desirable for data fitting purposes. Its interest is also shown through results about stochastic orders, quantile function, moments (raw, incomplete and probability weighted), stress-strength parameter and Tsallis entropy. New classes of distributions based on the power Ailamujia distribution are also presented. Then, we investigate the corresponding statistical model to analyze two kinds of data: complete data and data in presence of censorship. In particular, a goodness-of-fit statistical test allowing the processing of right-censored data is developed. The potential of the new model is demonstrated by its application to four data sets, two being related to the Covid-19 pandemic.
Keywords :
Ailamujia distribution , power distribution , moments , stress-strength parameter , entropy , data analysis , Covid-19 pandemic
Journal title :
Journal of Mathematical Modeling(JMM)
Serial Year :
2021
Record number :
2688263
Link To Document :
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