My question is pretty straightforward.
Does overdispersion mean anything when doing model selection and multi model inferences?
I understand that overdispersion affects the estimation of standard errors, and in consequence, CI and p-values. But if I am bypassing classical inference, and performing a model selection based on AIC, do I need to worry about overdispersion?
For example, if I am modeling a count variable using a Poisson GLM, I can measure and discuss how much dispersion in the data my model is not considering, by calculating residual variability and comparing with the fixed scale parameter. Of course, if I use a negative binomial model I will end up with a much more flexible model. But does overdispersion means anything in Model selection inference?