Main Article Content

Abstract

In health care research, overdispersion often arises in count data. The Poisson distribution is a traditional distribution for modeling count data. However, it cannot handle overdispersed count data. This article introduces a new count distribution for overdispersed data. Statistical properties and a multivariate version of the proposed distribution are derived. Two parameter estimation methods are discussed by the maximum likelihood method and Bayesian approach. A simulation study is conducted to assess the performance of the estimators. A regression model based on the proposed distribution is constructed. Finally, two health care applications are analyzed to show the potential of the proposed distribution and its associated regression model.

Keywords

Count Data Regression Model Bayesian Approach Maximum Likelihood Estimation

Article Details

How to Cite
Atikankul, Y., & Jornsatian, C. (2025). The Negative Binomial-Bilal Distribution: Regression Model and Applications to Health Care Data. Pakistan Journal of Statistics and Operation Research, 21(4), 619-630. https://doi.org/10.18187/pjsor.v21i4.4566