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A Conway–Maxwell–Poisson Type Generalization of...
Journal article

A Conway–Maxwell–Poisson Type Generalization of Hypergeometric Distribution

Abstract

The hypergeometric distribution has gained its importance in practice as it pertains to sampling without replacement from a finite population. It has been used to estimate the population size of rare species in ecology, discrete failure rate in reliability, fraction defective in quality control, and the number of initial faults present in software coding. Recently, Borges et al. considered a COM type generalization of the binomial distribution, called COM–Poisson–Binomial (CMPB) and investigated many of its characteristics and some interesting applications. In the same spirit, we develop here a generalization of the hypergeometric distribution, called the COM–hypergeometric distribution. We discuss many of its characteristics such as the limiting forms, the over- and underdispersion, and the behavior of its failure rate. We write its probability-generating function (pgf) in the form of Kemp’s family of distributions when the newly introduced shape parameter is a positive integer. In this form, closed-form expressions are derived for its mean and variance. Finally, we develop statistical inference procedures for the model parameters and illustrate the results by extensive Monte Carlo simulations.

Authors

Roy S; Tripathi RC; Balakrishnan N

Journal

Mathematics, Vol. 11, No. 3,

Publisher

MDPI

Publication Date

February 1, 2023

DOI

10.3390/math11030762

ISSN

2227-7390

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