Different estimation methods of the modified Kies Topp-Leone model with applications and quantile regression

Author:

Alghamdi Safar M.,Albalawi OlayanORCID,Almarzouki Sanaa Mohammed,Nagarjuna Vasili B. V.ORCID,Nasiru SulemanORCID,Elgarhy MohammedORCID

Abstract

This paper introduces the modified Kies Topp-Leone (MKTL) distribution for modeling data on the (0, 1) or [0, 1] interval. The shapes of the density and hazard rate functions manifest desirable shapes, making the MKTL distribution suitable for modeling data with different characteristics at the unit interval. Twelve different estimation methods are utilized to estimate the distribution parameters, and Monte Carlo simulation experiments are executed to assess the performance of the methods. The simulation results suggest that the maximum likelihood method is the superior method. The usefulness of the new distribution is illustrated by utilizing three data sets, and its performance is juxtaposed with that of other competing models. The findings affirm the superiority of the MKTL distribution over the other candidate models. Applying the developed quantile regression model using the new distribution disclosed that it offers a competitive fit over other existing regression models.

Funder

Taif University

Publisher

Public Library of Science (PLoS)

Reference48 articles.

1. A Family of J-Shaped Frequency Functions;C.W. Topp;Journal of the American Statistical Association,1955

2. A New Extension of the Topp-Leone Family of Models with Applications to Real Data;M. Muhammad;Annals of Data Science,2023

3. Cosine Topp-Leone Family of Distributions: Properties and Regression;S. Nanga;Research in Mathematics,2023

4. Tangent Topp-Leone Family of Distributions;S. Nanga;Scientific African,2022

5. A New Inverted Topp-Leone Distribution: Applications to the COVID-19 Mortality Rate in Two Different Countries;E. M. Almetwally;Axioms,2021

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