We consider discrete nonparametric priors which induce Gibbs-type exchangeable random partitions and investigate their posterior behavior in detail. In particular, we deduce conditional distributions and the corresponding Bayesian nonparametric estimators, which can be readily exploited for predicting various features of additional samples. The results provide useful tools for genomic applications where prediction of future outcomes is required.

Bayesian nonparametric estimators derived from conditional Gibbs structures

LIJOI, ANTONIO;PRUENSTER, IGOR;
2008

Abstract

We consider discrete nonparametric priors which induce Gibbs-type exchangeable random partitions and investigate their posterior behavior in detail. In particular, we deduce conditional distributions and the corresponding Bayesian nonparametric estimators, which can be readily exploited for predicting various features of additional samples. The results provide useful tools for genomic applications where prediction of future outcomes is required.
2008
2008
Lijoi, Antonio; Pruenster, Igor; Walker, Stephen G.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11565/3991395
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