On a Dirichlet Process Mixture Representation of Phase-Type Distributions.

Ayala, Daniel; Jofré, Leonardo; Gutiérrez, Luis; Mean, Ramsés

Abstract

An explicit representation of phase-type distributions as an infinite mixture of Erlang distributions is introduced. The representation unveils a novel and useful connection between a class of Bayesian nonparametric mixture models and phase-type distributions. In particular, this sheds some light on two hot topics, estimation techniques for phase-type distributions, and the availability of closed-form expressions for some functionals related to Dirichlet process mixture models. The power of this connection is illustrated via a posterior inference algorithm to estimate phase-type distributions, avoiding some difficulties with the simulation of latent Markov jump processes, commonly encountered in phase-type Bayesian inference. On the other hand, closed-form expressions for functionals of Dirichlet process mixture models are illustrated with density and renewal function estimation, related to the optimal salmon weight distribution of an aquaculture study.

Más información

Título de la Revista: BAYESIAN ANALYSIS
Volumen: 17
Número: 3
Editorial: INT SOC BAYESIAN ANALYSIS
Fecha de publicación: 2022
Página de inicio: 765
Página final: 790
URL: https://doi.org/10.1214/21-BA1272
DOI:

10.1214/21-BA1272

Notas: ISI