Bayesian Inference for the Negative Binomial-Sushila Linear Model


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Abstract

The aim of this article is to develop a new linear model for count data. The main idea is in an application of a new generalized linear model framework, which we call the Negative Binomial-Sushila linear model. The Negative Binomial-Sushila distribution has been proposed recently and applied to count data. This distribution is constructed as a mixture of the Negative Binomial and Sushila distributions. The mixed distribution is a flexible alternative to the Poisson distribution when over-dispersed count data is analyzed. The parameters of this distribution are estimated using a Bayesian approach with R2jags package of the R language. The Negative Binomial-Sushila linear model is applied to fit two real data sets with an over-dispersion and its performance is compared with the performance of some traditional models. The results show that the Negative Binomial-Sushila generalized linear model fits the data sets better than the traditional generalized models for these data sets.

About the authors

Darika Yamrubboon

Department of Statistics

Author for correspondence.
Email: darika.y@ku.th
Thailand, Bangkok, 10903

Ampai Thongteeraparp

Department of Statistics

Author for correspondence.
Email: fsciamu@ku.ac.th
Thailand, Bangkok, 10903

Winai Bodhisuwan

Department of Statistics

Author for correspondence.
Email: fsciwnb@ku.ac.th
Thailand, Bangkok, 10903

Katechan Jampachaisri

Department of Mathematics

Author for correspondence.
Email: katechanj@nu.ac.th
Thailand, Phitsanulok, 65000

Andrei Volodin

Department of Mathematics and Statistics

Author for correspondence.
Email: andrei.volodin@uregina.ca
Canada, Regina, SK, S4S 0A2


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