The Pitman–Yor multinomial process for mixture modelling

Author:

Lijoi Antonio1,Prünster Igor1,Rigon Tommaso1

Affiliation:

1. Department of Decision Sciences, Bocconi University, Via Röntgen 1, 20136 Milan, Italy

Abstract

Summary Discrete nonparametric priors play a central role in a variety of Bayesian procedures, most notably when used to model latent features, such as in clustering, mixtures and curve fitting. They are effective and well-developed tools, though their infinite dimensionality is unsuited to some applications. If one restricts to a finite-dimensional simplex, very little is known beyond the traditional Dirichlet multinomial process, which is mainly motivated by conjugacy. This paper introduces an alternative based on the Pitman–Yor process, which provides greater flexibility while preserving analytical tractability. Urn schemes and posterior characterizations are obtained in closed form, leading to exact sampling methods. In addition, the proposed approach can be used to accurately approximate the infinite-dimensional Pitman–Yor process, yielding improvements over existing truncation-based approaches. An application to convex mixture regression for quantitative risk assessment illustrates the theoretical results and compares our approach with existing methods.

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Statistics, Probability and Uncertainty,General Agricultural and Biological Sciences,Agricultural and Biological Sciences (miscellaneous),General Mathematics,Statistics and Probability

Reference27 articles.

1. A general class of distributions on the simplex;Aitchison,;J. R. Statist. Soc.,1985

2. Bayesian nonparametric inference beyond the Gibbs-type framework;Camerlenghi,;Scand. J. Statist.,2018

3. Convex mixture regression for quantitative risk assessment;Canale,;Biometrics,2018

4. Robustifying Bayesian nonparametric mixtures for count data;Canale,;Biometrics,2017

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