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Posterior Analysis for Normalized Random Measures with Independent Increments
Authors:LANCELOT F. JAMES,ANTONIO LIJOI, IGOR PRÜ  NSTER
Affiliation:Department of Information and Systems Management, Hong Kong University of Science and Technology;
Dipartimento di Economia Politica e Metodi Quantitativi, Universitàdegli Studi di Pavia and CNR–IMATI;
Dipartimento di Statistica e Matematica Applicata, Collegio Carlo Alberto and ICER, Universitàdegli Studi di Torino
Abstract:Abstract.  One of the main research areas in Bayesian Nonparametrics is the proposal and study of priors which generalize the Dirichlet process. In this paper, we provide a comprehensive Bayesian non-parametric analysis of random probabilities which are obtained by normalizing random measures with independent increments (NRMI). Special cases of these priors have already shown to be useful for statistical applications such as mixture models and species sampling problems. However, in order to fully exploit these priors, the derivation of the posterior distribution of NRMIs is crucial: here we achieve this goal and, indeed, provide explicit and tractable expressions suitable for practical implementation. The posterior distribution of an NRMI turns out to be a mixture with respect to the distribution of a specific latent variable. The analysis is completed by the derivation of the corresponding predictive distributions and by a thorough investigation of the marginal structure. These results allow to derive a generalized Blackwell–MacQueen sampling scheme, which is then adapted to cover also mixture models driven by general NRMIs.
Keywords:Bayesian Nonparametrics    Dirichlet process    normalized random measure    Poisson random measure    posterior distribution    predictive distribution
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