The proposal and study of dependent Bayesian nonparametric models has been one of the most active research lines in the last two decades, with random vectors of measures representing a natural and popular tool to define them. Nonetheless, a principled approach to understand and quantify the associated dependence structure is still missing. We devise a general, and not model-specific, framework to achieve this task for random measure based models, which consists in: (a) quantify dependence of a random vector of probabilities in terms of closeness to exchangeability, which corresponds to the maximally dependent coupling with the same marginal distributions, that is, the comonotonic vector; (b) recast the problem in terms of the underlying ran...
Bayesian nonparametric models are able to learn complex distributional patterns in the data by leve...
Exchangeable processes are extensively used in Bayesian nonparametrics to model exchangeable data. ...
Exchangeable processes are extensively used in Bayesian nonparametrics to model exchangeable data. ...
The proposal and study of dependent Bayesian nonparametric models has been one of the most active re...
The proposal and study of dependent Bayesian nonparametric models has been one of the most active re...
The proposal and study of dependent Bayesian nonparametric models has been one of the most active re...
The proposal and study of dependent Bayesian nonparametric models has been one of the most active re...
Optimal transport and Wasserstein distances are flourishing in many scientific fields as a means for...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Bayesian nonparametric models are able to learn complex distributional patterns in the data by leve...
Bayesian nonparametric models are able to learn complex distributional patterns in the data by leve...
Exchangeable processes are extensively used in Bayesian nonparametrics to model exchangeable data. ...
Exchangeable processes are extensively used in Bayesian nonparametrics to model exchangeable data. ...
The proposal and study of dependent Bayesian nonparametric models has been one of the most active re...
The proposal and study of dependent Bayesian nonparametric models has been one of the most active re...
The proposal and study of dependent Bayesian nonparametric models has been one of the most active re...
The proposal and study of dependent Bayesian nonparametric models has been one of the most active re...
Optimal transport and Wasserstein distances are flourishing in many scientific fields as a means for...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Random vectors of measures are at the core of many recent developments in Bayesian nonparametrics. F...
Bayesian nonparametric models are able to learn complex distributional patterns in the data by leve...
Bayesian nonparametric models are able to learn complex distributional patterns in the data by leve...
Exchangeable processes are extensively used in Bayesian nonparametrics to model exchangeable data. ...
Exchangeable processes are extensively used in Bayesian nonparametrics to model exchangeable data. ...