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Bayesian analysis of the generalized gamma distribution using non-informative priors
Authors:Pedro L Ramos  Jorge A Achcar  Fernando A Moala  Eduardo Ramos  Francisco Louzada
Institution:1. Institute of Mathematical and Computer Sciences, USP, Sao Carlos, Brazil;2. Social Medicine Department, Medical School, USP, Ribeirao Preto, Brazil;3. Department of Statistics, Sao Paulo State University, Presidente Prudente, Brazil
Abstract:The Generalized gamma (GG) distribution plays an important role in statistical analysis. For this distribution, we derive non-informative priors using formal rules, such as Jeffreys prior, maximal data information prior and reference priors. We have shown that these most popular formal rules with natural ordering of parameters, lead to priors with improper posteriors. This problem is overcome by considering a prior averaging approach discussed in Berger et al. Overall objective priors. Bayesian Analysis. 2015;10(1):189–221]. The obtained hybrid Jeffreys-reference prior is invariant under one-to-one transformations and yields a proper posterior distribution. We obtained good frequentist properties of the proposed prior using a detailed simulation study. Finally, an analysis of the maximum annual discharge of the river Rhine at Lobith is presented.
Keywords:Bayesian analysis  Generalized gamma distribution  Jeffreys prior  Reference prior
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