6533b862fe1ef96bd12c607d
RESEARCH PRODUCT
What Does Objective Mean in a Dirichlet-multinomial Process?
Anabel ForteDanilo AlvaresCarmen Armerosubject
Statistics and Probability05 social sciencesPosterior probabilityBayesian inference01 natural sciencesDirichlet distributionBinomial distribution010104 statistics & probabilitysymbols.namesake0502 economics and businessStatisticsObjective approachPrior probabilitysymbolsEconometricsMultinomial distribution0101 mathematicsStatistics Probability and UncertaintyBeta distribution050205 econometrics Mathematicsdescription
Summary The Dirichlet-multinomial process can be seen as the generalisation of the binomial model with beta prior distribution when the number of categories is larger than two. In such a scenario, setting informative prior distributions when the number of categories is great becomes difficult, so the need for an objective approach arises. However, what does objective mean in the Dirichlet-multinomial process? To deal with this question, we study the sensitivity of the posterior distribution to the choice of an objective Dirichlet prior from those presented in the available literature. We illustrate the impact of the selection of the prior distribution in several scenarios and discuss the most sensible ones.
year | journal | country | edition | language |
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2017-08-17 | International Statistical Review |