Asymptotic behavior of clusters in hierarchical species sampling models
Abstract
Consider a sample of size $N$ from a population governed by a hierarchical
species sampling model. We study the large $N$ asymptotic behavior of the
number ${\bf K}_N$ of clusters and the number ${\bf M}_{r,N}$ of clusters with
frequency $r$ in the sample. In particular, we show almost sure and $L^p$
convergence for ${\bf M}_{r,N}$, obtain Gaussian fluctuation theorems for ${\bf
K}_N$, and establish large deviation principles for both ${\bf K}_N$ and ${\bf
M}_{r,N}$. Our approach relies on a random sample size representation of the
number of clusters through the corresponding non-hierarchical species sampling
model.