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Revista Colombiana de Estadística
Print version ISSN 0120-1751
Abstract
MOALA, Fernando A. and MORAES, Gustavo. Objective Prior Distributions to Estimate the Parameters of the Poisson-Exponential Distribution. Rev.Colomb.Estad. [online]. 2023, vol.46, n.1, pp.93-110. Epub Jan 18, 2023. ISSN 0120-1751. https://doi.org/10.15446/rce.v46nl.95989.
In this paper, a set of important objective priors are examined for the Bayesian estimation of the parameters present in the Poisson-Exponential distribution PE. We derived the multivariate Jeffreys prior and the Maxi-mal Data Information Prior. Reference prior and others priors proposed in the literature are also analyzed. We show that the posterior densities resulting from these approaches are proper although the respective priors are improper. Monte Carlo simulations are used to compare the efficiencies and to assess the sensitivity of the choice of the priors, mainly for small sample sizes. This simulation study shows that the mean square error, mean bias and coverage probability of credible intervals under Gamma, Jeffreys' rule and Box & Tiao priors presented equal results, whereas Jeffreys and Reference priors showed the best results. The MDIP prior had a worse performance in all analyzed situations showing not to be indicated for Bayesian analysis of the PE distribution. A real data set is analyzed for illustrative purpose of the Bayesian approaches.
Keywords : Bayesian; Poisson-Exponential; Jeffreys; MDIP; Objective; Prior.