overdisp - Overdispersion in Count Data Multiple Regression Analysis
Detection of overdispersion in count data for multiple
regression analysis. Log-linear count data regression is one of
the most popular techniques for predictive modeling where there
is a non-negative discrete quantitative dependent variable. In
order to ensure the inferences from the use of count data
models are appropriate, researchers may choose between the
estimation of a Poisson model and a negative binomial model,
and the correct decision for prediction from a count data
estimation is directly linked to the existence of
overdispersion of the dependent variable, conditional to the
explanatory variables. Based on the studies of Cameron and
Trivedi (1990) <doi:10.1016/0304-4076(90)90014-K> and Cameron
and Trivedi (2013, ISBN:978-1107667273), the overdisp() command
is a contribution to researchers, providing a fast and secure
solution for the detection of overdispersion in count data.
Another advantage is that the installation of other packages is
unnecessary, since the command runs in the basic R language.