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A note on Bayesian robustness for count data
Author(s) -
Jairo Fúquene,
Moisés Delgado
Publication year - 2012
Publication title -
brazilian journal of probability and statistics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.441
H-Index - 18
eISSN - 2317-6199
pISSN - 0103-0752
DOI - 10.1214/10-bjps134
Subject(s) - conjugate prior , mathematics , cauchy distribution , poisson distribution , prior probability , count data , exponential family , bayesian probability , robustness (evolution) , statistics , gamma distribution , exponential distribution , bayes' theorem , biochemistry , chemistry , gene
The usual Bayesian approach for count data is Gamma/Poisson conjugate analysis. However, in this conjugate analysis the influence of the prior distribution could be dominant even when prior and likeli- hood are in conflict. Our proposal is an analysis based on the Cauchy prior for natural parameter in exponential families. In this work we show that the Cauchy/Poisson posterior model is a robust model for count data in contrast with the usual conjugate Bayesian approach Gamma/Poisson model. We use the polynomial tails comparison theo- rem given in Fuquene, J. A., Cook, J. D. and Pericchi, L. R. (2009) that gives easy-to-check conditions to ensure prior robustness. In short, this means that when the location of the prior and the bulk of the mass of the likelihood get further apart (a situation of conflict between prior and likelihood information), Bayes Theorem will cause the posterior distri- bution to discount the prior information. Finally, we analyze artificial data sets to investigate the robustness of the Cauchy/Poisson model.

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