ClinicalRobustPriors: Robust Bayesian Priors in Clinical Trials: An R Package for
Practitioners
In a recent paper, Fuquene, Cook, & Pericchi (2008)
(http://www.bepress.com/mdandersonbiostat/paper44 ) make a
comprehensive proposal putting forward robust, heavy-tailed
priors over conjugate, light-tailed priors in Bayesian
analysis. The behavior of Robust Bayesian methods is
qualitative different than Conjugate and short tailed Bayesian
methods and arguably much more reasonable and acceptable to the
practitioner and regulatory agencies. This package is useful to
compute the distributions (prior, likelihood and posterior) and
moments of the robust models: Cauchy/Binomial, Cauchy/Normal
and Berger/Normal. Both, Binomial and Normal Likelihoods can be
handled by the software. Furthermore, the assessment of the
hyperparameters and the posterior analysis can be processed.
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