Publication | Closed Access
Bayesian identifiability and misclassification in multinomial data
51
Citations
15
References
2004
Year
Bayesian StatisticBayesian Decision TheoryBayesian StatisticsKnowledge DiscoveryGibbs Sampling AlgorithmMultinomial Cell EntriesBayesian EconometricsBiostatisticsStatistical InferenceBayesian MethodsBayesian IdentifiabilityPublic HealthMultinomial DataStatisticsBayesian InferenceBayesian Hierarchical Modeling
Abstract The authors consider the Bayesian analysis of multinomial data in the presence of misclassification. Misclassification of the multinomial cell entries leads to problems of identifiability which are categorized into two types. The first type, referred to as the permutation‐type nonidentifiabilities, may be handled with constraints that are suggested by the structure of the problem. Problems of identifiability of the second type are addressed with informative prior information via Dirichlet distributions. Computations are carried out using a Gibbs sampling algorithm.
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