Maria Fernanda Gil Leyva Villa

Maria Fernanda Gil Leyva Villa
Universidad Nacional Autónoma de México | UNAM · Department of Probability and Statistics

Master of Science

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7
Publications
542
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20
Citations

Publications

Publications (7)
Article
Gibbs sampling methods are standard tools to perform posterior inference for mixture models. These have been broadly classified into two categories: marginal and conditional methods. While conditional samplers are more widely applicable than marginal ones, they may suffer from slow mixing in infinite mixtures, where some form of truncation, either...
Preprint
Full-text available
Gibbs sampling methods for mixture models are based on data augmentation schemes that account for the unobserved partition in the data. Conditional samplers rely on allocation variables that identify each observation with a mixture component. They are known to suffer from slow mixing in infinite mixtures, where some form of truncation, either deter...
Article
Our object of study is the general class of stick-breaking processes with exchangeable length variables. These generalize well-known Bayesian non-parametric priors in an unexplored direction. We give conditions to assure the respective species sampling process is proper and the corresponding prior has full support. For a rich sub-class we explain h...
Preprint
Full-text available
We investigate the general class of stick-breaking processes with exchangeable length variables. These generalize well-known Bayesian non-parametric priors in an unexplored direction. We give conditions to assure the respective species sampling process is discrete almost surely and the corresponding prior has full support. For a rich sub-class we f...
Preprint
Full-text available
A new class of nonparametric prior distributions, termed Beta-Binomial stick-breaking process, is proposed. By allowing the underlying length random variables to be dependent through a Beta marginals Markov chain, an appealing discrete random probability measure arises. The chain's dependence parameter controls the ordering of the stick-breaking we...

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