WEIGHTED WEIBULL INVERSE EXPONENTIAL MODEL WITH APPLICATION
Keywords:
weighted Weibull generated family, harmonic mean, inverse exponential distribution, inverse moments, maximum likelihood.DOI:
https://doi.org/10.17654/0972361723051Abstract
In the present paper, we offer a novel three-parameter model called the weighted Weibull inverse exponential (WW-IE) distribution. We compute some basic statistical properties such as quantile function (QuF), inverse moments (INMO), harmonic mean (HM) and different measures of entropy. The WW-IE distribution parameters were estimated using the maximum likelihood (ML) method. The WW-IE distribution compared to six known distributions such as new double-weighted-Weibull, weighted-transmuted Weibull, Weibull, transmuted-Weibull, double-weighted-exponential (DWE) and weighted-Weibull distributions employing one real medical dataset. The numerical results illustrate the superiority of the WW-IE distribution other than the six competitive distributions.
Received: July 2, 2023
Accepted: August 8, 2023
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