Comparison of Bivariate Negative Binomial Regression Models for Handling Over Dispersion.
Date
2017-03-16Author
DEWI, Yuliani Setia
PURNAMI, Santi Wulan
PURHADI, Purhadi
SUTIKNO, Sutikno
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Some methods have been proposed for dealing with extra Poisson variation when conducting
regression analysis of count data. One of them is negative binomial regression model. For bivariate
cases, there are some methods for constructing bivariate negative binomial distributions. Two of them
are bivariate negative binomial distribution as a mixture Poisson gamma and a result of
multiplication of negative binomial marginals by a multiplicative factor. In this paper we will review the
bivariate negative binomial regression models based on those distributions by using maximum
likelihood estimation (MLE) method, including the parameters estimation and hypothesis testing. We
use health care datasets as the application. The bivariate negative binomial models tend to give
better performance than the bivariate Poisson models for analyzing the data with over-dispersion. In
this work, a model that comes from a result of multiplication of negative binomial marginals by a
multiplicative factor has best performance in modeling the health care data.
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- LSP-Jurnal Ilmiah Dosen [7356]