Discrete random structures are important tools in Bayesian nonpara- metrics and the resulting models have proven effective in density estimation, clus- tering, topic modeling and prediction, among others. In this paper, we consider nested processes and study the dependence structures they induce. Dependence ranges between homogeneity, corresponding to full exchangeability, and maximum heterogeneity, corresponding to (unconditional) independence across samples. The popular nested Dirichlet process is shown to degenerate to the fully exchangeable case when there are ties across samples at the observed or latent level. To overcome this drawback, inherent to nesting general discrete random measures, we introduce a novel class of latent nested p...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
<p>This thesis develops Bayesian latent class models for nested categorical data, e.g., people neste...
Prior distributions play a crucial role in Bayesian approaches to clustering. Two commonly-used prio...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
The proposal and study of dependent nonparametric priors has been a major research focus in the rece...
No abstract availableIn Bayesian Statistics the modeling of data with complex dependence structures ...
The availability of complex-structured data has sparked new research directions in statistics and ma...
The definition and investigation of general classes of non-parametric priors has recently been an ac...
We consider Bayesian nonparametric inference for continuous-valued partially exchangeable data, when...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
Dependent nonparametric processes extend distributions over mea-sures, such as the Dirichlet process...
Discrete random probability measures and the exchangeable random partitions they induce are key tool...
Over recent years Dirichlet processes and the associated Chinese restaurant process (CRP) have found...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
<p>This thesis develops Bayesian latent class models for nested categorical data, e.g., people neste...
Prior distributions play a crucial role in Bayesian approaches to clustering. Two commonly-used prio...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
The proposal and study of dependent nonparametric priors has been a major research focus in the rece...
No abstract availableIn Bayesian Statistics the modeling of data with complex dependence structures ...
The availability of complex-structured data has sparked new research directions in statistics and ma...
The definition and investigation of general classes of non-parametric priors has recently been an ac...
We consider Bayesian nonparametric inference for continuous-valued partially exchangeable data, when...
This book presents a systematic and comprehensive treatment of various prior processes that have bee...
Dependent nonparametric processes extend distributions over mea-sures, such as the Dirichlet process...
Discrete random probability measures and the exchangeable random partitions they induce are key tool...
Over recent years Dirichlet processes and the associated Chinese restaurant process (CRP) have found...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
Many popular Bayesian nonparametric priors can be characterized in terms of exchangeable species sam...
<p>This thesis develops Bayesian latent class models for nested categorical data, e.g., people neste...
Prior distributions play a crucial role in Bayesian approaches to clustering. Two commonly-used prio...