Abstract

In this paper, a new modified version of geometric distribution is proposed. The newly introduced model is called transmuted record type geometric (TRTG) distribution. TRTG distribution is a good alternative to the negative binomial, Poisson and geometric distributions in modeling real data encountered in several applied fields. The main statistical properties of the new distribution were obtained. We determined the measures of value at risk and tail value at risk for the TRTG distribution. These measures are important quantities in actuarial sciences for portfolio optimization under uncertainty. The TRTG parameters were estimated via maximum likelihood, moments, proportions, and Bayesian estimation methods, and the simulation results were determined to explore their performance. Furthermore, a new count regression model based on the TRTG distribution was proposed. Four real data applications were adopted to illustrate the applicability of the TRTG distribution and its count regression model. These applications showed empirically that the TRTG distribution outperforms some important discrete models such as the negative binomial, transmuted geometric, discrete Burr, discrete Chen, geometric, and Poisson distributions.

Highlights

  • Published: 9 June 2021Discrete models are very important in handling count data encountered in several theoretical and applied sciences such as medicine, insurance, life testing, biology, and agriculture

  • The results of observed and expected frequencies, χ2 and −`n are listed in Tables 5–7 for the three data sets, respectively. The values in these tables reveal that the transmuted record type geometric (TRTG) distribution has the lowest values for χ2 and −`n among all competing discrete models and it provides a better fit for the given data sets than the transmuted geometric (TRAG), discrete Burr (DB), discrete Chen (DC), negative binomial (NB), G, and P distributions

  • We derived and studied a new discrete distribution which was defined on N using the transmuted record type approach to extend the geometric distribution

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Summary

A New Extended Geometric Distribution

Mohammed Mohammed Ahmed Almazah 1,2 , Tenzile Erbayram 3 , Yunus Akdoğan 3 and Mashail M. Extended Geometric Distribution: Properties, Regression Model, and Actuarial Applications.

Introduction
The TRTG Distribution
Moments and Quantile Function
Stochastic Orders
VaR Measure of the TRTG Distribution
TVaR Measure of the TRTG Distribution
Method of Maximum Likelihood
Method of Moments
Method of Proportions
Bayesian Method
Simulation Study
Modeling Three Actuarial Data
TRTG Count Regression Model
Conclusions
Methods
Full Text
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