The New Topp-Leone-Type II Exponentiated Half Logistic-Marshall-Olkin-G Family of Distributions with Applications
Keywords:
Topp-Leone-G, Type II Exponentiated-Half Logistic-G, Marshall-Olkin-G, Maximum Likelihood Estimation
Abstract
In this paper, we propose a new family of generalized distributions called the Topp-Leone type II Exponentiated-Half Logistic-Marshall-Olkin-G (TL-TIIEHL-MO-G) distribution. The new distribution can be expressed as an infinite linear combination of exponentiated-G family of distributions. Some special models of the new family of distributions are explored. Statistical properties including the quantile function, ordinary and incomplete moments, stochastic orders, probability weighted moments, distribution of the order statistics and R\'enyi entropy are presented. The maximum likelihood method is used for estimating the model parameters and Monte Carlo simulation is conducted to examine the performance of the model. The flexibility and importance of the new family of distributions is demonstrated by means of applications to real data for censored and complete sets, respectively.
Published
2025-03-19
How to Cite
Oluyede, B., Lekono, G. J., & Gabaitiri, L. (2025). The New Topp-Leone-Type II Exponentiated Half Logistic-Marshall-Olkin-G Family of Distributions with Applications. Statistics, Optimization & Information Computing. https://doi.org/10.19139/soic-2310-5070-1872
Issue
Section
Research Articles
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