Negative Binomial Regression - NCSS
Deviance The deviance is twice the difference between the maximum achievable log -likelihood and the log- likelihood of the fitted model. In multiple regression under normality, the deviance is the residual sum of squares. In the case of negative binomial regression, the deviance is a generalization of the sum of squares. The maximum possible log
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