On Non- and Weakly-Informative Priors for the Conway-Maxwell-Poisson (COM-Poisson) Distribution
arXiv (Cornell University)(2023)
Abstract
Previous Bayesian evaluations of the Conway-Maxwell-Poisson (COM-Poisson)
distribution have little discussion of non- and weakly-informative priors for
the model. While only considering priors with such limited information
restricts potential analyses, these priors serve an important first step in the
modeling process and are useful when performing sensitivity analyses. We
develop and derive several weakly- and non-informative priors using both the
established conjugate prior and Jeffreys' prior. Our evaluation of each prior
involves an empirical study under varying dispersion types and sample sizes. In
general, we find the weakly informative priors tend to perform better than the
non-informative priors. We also consider several data examples for illustration
and provide code for implementation of each resulting posterior.
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