In Bayesian analysis, the so-called conjugate models allow obtaining the posterior distribution in exact form, in the sense that the posterior quantities can explicitly be written in a computable form. However, this class of models only involves a few structures, with some specific prior distribution for every data distribution. Although approximate methods such as numerical integration and MCMC are very efficient in Bayesian inference, little attention has been devoted to alternative views. In particular, the well-known conjugate Pareto-Gamma model is very restrictive, since the prior information can be expressed only through a Gamma distribution. In this work, we use special functions to extend the class of possible prior distributions that allow obtaining the posterior distribution in exact form. We give results that allow the use of any prior distribution within the broad class of H-functions. An example is provided to illustrate the theory.
机构:
Nicolae Titulescu Univ, Fac Econ Sci, Bucharest 040051, Romania
Ovidius Univ Constanta, Fac Math & Comp Sci, Constanta 900527, RomaniaNicolae Titulescu Univ, Fac Econ Sci, Bucharest 040051, Romania
Teodorescu, Sandra
Vernic, Raluca
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Inst Math Stat & Appl Math, Bucharest 050711, RomaniaNicolae Titulescu Univ, Fac Econ Sci, Bucharest 040051, Romania