Functionals of random probability measures are probabilistic objects whose properties are studied in different fields. They also play an important role in Bayesian Nonparametrics: understanding the behavior of a finite dimensional feature of a flexible and infinite-dimensional prior is crucial for prior elicitation. In particular distributions of means of nonparametric priors have been the object of thorough investigation in the literature. We target the inverse path: the determination of the parameter measure of a random probability measure giving rise to a fixed mean distribution. This direction yields a better understanding of the sets of mean distributions of notable nonparametric priors, giving moreover a way to directly enforce prior information, without losing inferential power. Here we summarize and report results obtained in [6] for the Dirichlet process, the normalized stable random measure and the Pitman–Yor process, with an application to mixture models.

(2022). Specification of the Base Measure of Nonparametric Priors via Random Means . Retrieved from https://hdl.handle.net/10446/311833

Specification of the Base Measure of Nonparametric Priors via Random Means

Gaffi, Francesco;
2022-01-01

Abstract

Functionals of random probability measures are probabilistic objects whose properties are studied in different fields. They also play an important role in Bayesian Nonparametrics: understanding the behavior of a finite dimensional feature of a flexible and infinite-dimensional prior is crucial for prior elicitation. In particular distributions of means of nonparametric priors have been the object of thorough investigation in the literature. We target the inverse path: the determination of the parameter measure of a random probability measure giving rise to a fixed mean distribution. This direction yields a better understanding of the sets of mean distributions of notable nonparametric priors, giving moreover a way to directly enforce prior information, without losing inferential power. Here we summarize and report results obtained in [6] for the Dirichlet process, the normalized stable random measure and the Pitman–Yor process, with an application to mixture models.
27-nov-2022
2022
Inglese
New Frontiers in Bayesian Statistics. BAYSM 2021, Online, September 1–3
Argiento, Raffaele; Camerlenghi, Federico; Paganin, Sally;
978-3-031-16426-2
978-3-031-16427-9
405
91
100
cartaceo
online
Switzerland
Cham
Springer
BaYSM 2021: 5th Bayesian Young Statisticians Meeting, online, 1-3 September 2021
Virtual (online)
1-3 September 2021
internazionale
contributo
Settore STAT-01/A - Statistica
Settore MATH-03/B - Probabilità e statistica matematica
Dirichlet process; Nonparametric prior elicitation; Normalized stable process; Pitman-Yor process; Random means; Random probability measures
info:eu-repo/semantics/conferenceObject
3
Gaffi, Francesco; Lijoi, Antonio; Prünster, Igor
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.01 Contributi in atti di convegno - Conference presentations
reserved
Non definito
273
(2022). Specification of the Base Measure of Nonparametric Priors via Random Means . Retrieved from https://hdl.handle.net/10446/311833
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