Research Articles

Bivariate Gompertz generator of distributions: statistical properties and estimation with application to model football data

Authors:

Abstract

In this paper, the bivariate extension of the so called Gompertz-G family was introduced and studied in detail. Marshall and Olkin shock model was used to build the proposed bivariate family. The new family was constructed from three independent Gompertz-H families using a minimisation process. Some of its statistical properties such as joint probability density function, coefficient of median correlation, moments, product moment, covariance, conditional probability density function, joint reliability function, stress-strength reliability and joint reversed (hazard) rate function were derived. After introducing the general class, three special models of the new family were discussed. Maximum likelihood method was used to estimate the family parameters. A simulation study was carried out to examine the bias and mean square error of the maximum likelihood estimators. Finally, the importance of the proposed bivariate family was illustrated by means of real dataset, and it was found that the proposed model provides better fit than other well-known models in the statistical literature such as bivariate Gompertz, bivariate generalised Gompertz, bivariate Gumbel Gompertz, bivariate Burr X Gompertz and bivariate exponentiated Weibull-Gomperz.

Keywords:

Bivariate distributionsGompertz-H family of distributionsMarshall-Olkin shock modelmaximum likelihood method
  • Year: 2020
  • Volume: 48 Issue: 2
  • Page/Article: 149-162
  • DOI: 10.4038/jnsfsr.v48i2.8779
  • Published on 13 Oct 2020
  • Peer Reviewed