To quantify the dependence between two random vectors of possibly different dimensions, we propose to rely on the properties of the 2-Wasserstein distance. We first propose two coefficients that are based on the Wasserstein distance between the actual distribution and a reference distribution with independent components. The coefficients are normalized to take values between 0 and 1, where 1 represents the maximal amount of dependence possible given the two multivariate margins. We then make a quasi-Gaussian assumption that yields two additional coefficients rooted in the same ideas as the first two. These different coefficients are more amenable for distributional results and admit attractive formulas in terms of the joint covariance or co...
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...
To quantify the dependence between two random vectors of possibly different dimensions, we propose t...
Optimal transport and Wasserstein distances are flourishing in many scientific fields as a means for...
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...
The proposal and study of dependent Bayesian nonparametric models has been one of the most active re...
The simple correlation coefficient between two variables has been generalized to measures of associa...
The simple correlation coefficient between two variables has been generalized to measures of associa...
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...
To quantify the dependence between two random vectors of possibly different dimensions, we propose t...
Optimal transport and Wasserstein distances are flourishing in many scientific fields as a means for...
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...
The proposal and study of dependent Bayesian nonparametric models has been one of the most active re...
The simple correlation coefficient between two variables has been generalized to measures of associa...
The simple correlation coefficient between two variables has been generalized to measures of associa...
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...