Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two rates: one is determined via suitable measures of concentration of the prior around the “true” density f_0, and the other is related to the way the mass is spread outside a neighborhood of f_0. Here we provide a lower bound for the former in terms of the usual notion of prior concentration and in terms of an alternative definition of prior concentration. Moreover, we determine the latter for two important classes of priors: the infinite–dimensional exponential family, and the Polya trees.

On convergence rates for nonparametric posterior distributions

LIJOI, ANTONIO;
2007-01-01

Abstract

Rates of convergence of Bayesian nonparametric procedures are expressed as the maximum between two rates: one is determined via suitable measures of concentration of the prior around the “true” density f_0, and the other is related to the way the mass is spread outside a neighborhood of f_0. Here we provide a lower bound for the former in terms of the usual notion of prior concentration and in terms of an alternative definition of prior concentration. Moreover, we determine the latter for two important classes of priors: the infinite–dimensional exponential family, and the Polya trees.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11571/108861
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