Random Discrete Probability Measures Based on Negative Binomial Process
Statistics Theory
2023-07-04 v1 Statistics Theory
Abstract
An important functional of Poisson random measure is the negative binomial process (NBP). We use NBP to introduce a generalized Poisson-Kingman distribution and its corresponding random discrete probability measure. This random discrete probability measure provides a new set of priors with more flexibility in nonparametric Bayesian models. It is shown how this random discrete probability measure relates to the non-parametric Bayesian priors such as Dirichlet process, normalized positive {\alpha}-stable process, Poisson-Dirichlet process (PDP), and others. An extension of the DP with its almost sure approximation is presented. Using our representation for NBP, we derive a new series representation for the PDP.
Cite
@article{arxiv.2307.00176,
title = {Random Discrete Probability Measures Based on Negative Binomial Process},
author = {Sadegh Chegini and Mahmoud Zarepour},
journal= {arXiv preprint arXiv:2307.00176},
year = {2023}
}
Comments
18 pages, 3 figures