General Bayesian inference schemes in infinite mixture models
Maria Lomeli

TL;DR
This paper develops exact inference schemes for infinite mixture models using Bayesian nonparametric blocks, especially Poisson-Kingman priors, enabling flexible and tractable compositional modeling.
Contribution
It introduces inference algorithms for Poisson-Kingman priors, expanding Bayesian nonparametric modeling beyond Dirichlet and Pitman-Yor processes.
Findings
Developed MCMC and SMC inference methods for Poisson-Kingman priors
Extended tractable representations to a broader class of BNP models
Facilitated compositional modeling with exact inference schemes
Abstract
Bayesian statistical models allow us to formalise our knowledge about the world and reason about our uncertainty, but there is a need for better procedures to accurately encode its complexity. One way to do so is through compositional models, which are formed by combining blocks consisting of simpler models. One can increase the complexity of the compositional model by either stacking more blocks or by using a not-so-simple model as a building block. This thesis is an example of the latter. One first aim is to expand the choice of Bayesian nonparametric (BNP) blocks for constructing tractable compositional models. So far, most of the models that have a Bayesian nonparametric component use a Dirichlet Process or a Pitman-Yor process because of the availability of tractable and compact representations. This thesis shows how to overcome certain intractabilities in order to obtain analogous…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Gaussian Processes and Bayesian Inference · Statistical Methods and Inference
