Negative Binomial Regression - NCSS
Some books on regression analysis briefly discuss Poisson and/or negative binomial regression. We are aware of only a few books that are completely dedicated to the discussion of count regression (Poisson and negative binomial regression) . These are Cameron and Trivedi ( 2013) and Hilbe (2014) . Most of the results presented here were obtained ...
Regression, Negative, Binomial, Negative binomial regression
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