Abstract
We obtain the strong law of large numbers, Glivenko-Cantelli theorem, central limit theorem, functional central limit theorem for various Bayesian nonparametric priors which include the stick-breaking process with general stick-breaking weights, the two-parameter Poisson-Dirichlet process, the normalized inverse Gaussian process, the normalized generalized gamma process, and the generalized Dirichlet process. For the stick-breaking process with general stick-breaking weights, we introduce two general conditions such that the central limit theorem and functional central limit theorem hold. Except in the case of the generalized Dirichlet process, since the finite dimensional distributions of these processes are either hard to obtain or are complicated to use even they are available, we use the method of moments to obtain the convergence results. For the generalized Dirichlet process we use its marginal distributions to obtain the asymptotics although the computations are highly technical.
Funding Statement
Yaozhong Hu was supported by an NSERC discovery fund and a startup fund of University of Alberta.
Acknowledgments
We sincerely thank the anonymous referees for the careful reading and for the constructive and inspiring comments which improves the paper significantly.
Citation
Yaozhong Hu. Junxi Zhang. "Functional Central Limit Theorems for Stick-Breaking Priors." Bayesian Anal. 17 (4) 1101 - 1120, December 2022. https://doi.org/10.1214/21-BA1290
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