We consider the problem of finding the closest multivariate Gaussian distribution on a constraint surface of all Gaussian distributions to a given distribution. Previous research regarding geodesics on the multivariate Gaussian manifold has focused on finding closed-form, shortest-path distances between two fixed distributions on the manifold, often restricting the parameters to obtain the desired solution. We demonstrate how to employ the techniques of the calculus of variations with a variable endpoint to search for the closest distribution from a family of distributions generated via a constraint set on the parameter manifold. Furthermore, we examine the intermediate distributions along the learned geodesics which provide insight into un...
We consider the optimal transport problem between zero mean Gaussian stationary random fields both i...
Distribution calibration plays an important role in cross-domain learning. However, existing distrib...
The construction of a distance function between probability distributions is of importance in mathem...
In this paper we study the geometry of the differentiable manifold associated with two samples of sy...
We propose a novel Riemannian geometric framework for variational inference in Bayesian models based...
In the last years the reputation of medical, economic, and scientific expertise has been strongly da...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
We consider the optimal transport problem between zero mean Gaussian stationary random fields both i...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
AbstractThe construction of a distance function between probability distributions is of importance i...
We consider the optimal transport problem between zero mean Gaussian stationary random fields both i...
Distribution calibration plays an important role in cross-domain learning. However, existing distrib...
The construction of a distance function between probability distributions is of importance in mathem...
In this paper we study the geometry of the differentiable manifold associated with two samples of sy...
We propose a novel Riemannian geometric framework for variational inference in Bayesian models based...
In the last years the reputation of medical, economic, and scientific expertise has been strongly da...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
We consider the optimal transport problem between zero mean Gaussian stationary random fields both i...
When dealing with a parametric statistical model, a Riemannian manifold can naturally appear by endo...
AbstractThe construction of a distance function between probability distributions is of importance i...
We consider the optimal transport problem between zero mean Gaussian stationary random fields both i...
Distribution calibration plays an important role in cross-domain learning. However, existing distrib...
The construction of a distance function between probability distributions is of importance in mathem...