April 28, 2024
Hossein Haghbin

Hossein Haghbin

Academic Rank: Assistant professor
Address:
Degree: Ph.D in Statistics
Phone: 077322
Faculty: Faculty of Intelligent Systems and Data Science

Research

Title The exponentiated odd log-logistic family of distributions: properties and applications
Type Article
Keywords
Generated family; Maximum likelihood; Moment; Odd log-logistic distribution; Probability weighted moment; Quantile function; Rényi entropy
Journal Journal of Statistical Modelling: Theory and Applications
DOI
Researchers Morad Alizadeh (First researcher) , Saeid Tahmasebi (Second researcher) , Hossein Haghbin (Third researcher)

Abstract

Based on the generalized log-logistic family (Gleaton and Lynch (2006)) of distributions, we propose a new family of continuous distributions with two extra shape parameters called the exponentiated odd log-logistic family. It extends the class of exponentiated distributions, odd log-logistic family (Gleaton and Lynch (2006)) and any continuous distribution by adding two shape parameters. Some special cases of this family are discussed. We investigate the shapes of the density and hazard rate functions. The proposed family has also tractable properties such as various explicit expressions for the ordinary and incomplete moments, quantile and generating functions, probability weighted moments, Bonferroni and Lorenz curves, Shannon and Rényi entropies, extreme values and order statistics, which hold for any baseline model. The model parameters are estimated by maximum likelihood and the usefulness of the new family is illustrated by means of three real data sets