Generalised Poisson-Dirichlet Distributions and the Negative Binomial Point Process
Abstract: When $S=(S_t){t\ge 0}$ is an $\alpha$-stable subordinator, the sequence of ordered jumps of $S$, up till time $1$, omitting the $r$ largest of them, and taken as proportions of their sum ${(r)}S_t$, defines a 2-parameter distribution on the infinite dimensional simplex, $\nabla{\infty}$, which we call the $\mathrm{PD}\alpha{(r)}$ distribution. When $r=0$ it reduces to the $\mathrm{PD}\alpha$ distribution introduced by Kingman in 1975. We observe a serendipitous connection between $\mathrm{PD}\alpha{(r)}$ and the negative binomial point process of Gregoire (1984), which we exploit to analyse in detail a size-biased version of $\mathrm{PD}\alpha{(r)}$. As a consequence we derive a stick-breaking representation for the process and a useful form for its distribution. This program produces a large new class of distributions available for a variety of modelling purposes.
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