We extend the theory of logarithmic Voronoi cells to Gaussian statistical models. In general, a logarithmic Voronoi cell at a point on a Gaussian model is a convex set contained in its log-normal spectrahedron. We show that for models of ML degree one and linear covariance models the two sets coincide. In particular, they are equal for both directed and undirected graphical models. We introduce decomposition theory of logarithmic Voronoi cells for the latter family. We also study covariance models, for which logarithmic Voronoi cells are, in general, strictly contained in log-normal spectrahedra. We give an explicit description of logarithmic Voronoi cells for the bivariate correlation model and show that they are semi-algebraic sets. Final...
It is discussed how a limiting procedure of conformal field theories may result in logarithmic confo...
In this talk we'll recall how central limit theorems for the linear statistics of beta ensembles imp...
Abstract. Gaussian graphical models are parametric statistical models for jointly nor-mal random var...
We study logarithmic Voronoi cells for linear statistical models and partial linear models. The loga...
In this article, we combine results from the theory of linear exponential families, polyhedral geome...
AbstractThe theory and methods of linear algebra are a useful alternative to those of convex geometr...
A colored Gaussian graphical model is a linear concentration model in which equalities among the con...
Toric models have been recently introduced in the analysis of statistical models for categorical dat...
Gaussian graphical models have become a well-recognized tool for the analysis of conditional indepen...
Maulik and Ranganathan have recently introduced moduli spaces of logarithmic stable pairs. We examin...
In the paper, the authors introduce a matrix-parametrized generalization of the multinomial probabil...
AbstractLet X be a random vector with values in Rn and a Gaussian density f. Let Y be a random vecto...
In the thesis "On Boundaries of Statistical Models" problems related to a description of probability...
Gaussian double Markovian models consist of covariance matrices constrained by a pair of graphs spec...
In this article, we establish novel decompositions of Gaussian fields taking values in suitable spac...
It is discussed how a limiting procedure of conformal field theories may result in logarithmic confo...
In this talk we'll recall how central limit theorems for the linear statistics of beta ensembles imp...
Abstract. Gaussian graphical models are parametric statistical models for jointly nor-mal random var...
We study logarithmic Voronoi cells for linear statistical models and partial linear models. The loga...
In this article, we combine results from the theory of linear exponential families, polyhedral geome...
AbstractThe theory and methods of linear algebra are a useful alternative to those of convex geometr...
A colored Gaussian graphical model is a linear concentration model in which equalities among the con...
Toric models have been recently introduced in the analysis of statistical models for categorical dat...
Gaussian graphical models have become a well-recognized tool for the analysis of conditional indepen...
Maulik and Ranganathan have recently introduced moduli spaces of logarithmic stable pairs. We examin...
In the paper, the authors introduce a matrix-parametrized generalization of the multinomial probabil...
AbstractLet X be a random vector with values in Rn and a Gaussian density f. Let Y be a random vecto...
In the thesis "On Boundaries of Statistical Models" problems related to a description of probability...
Gaussian double Markovian models consist of covariance matrices constrained by a pair of graphs spec...
In this article, we establish novel decompositions of Gaussian fields taking values in suitable spac...
It is discussed how a limiting procedure of conformal field theories may result in logarithmic confo...
In this talk we'll recall how central limit theorems for the linear statistics of beta ensembles imp...
Abstract. Gaussian graphical models are parametric statistical models for jointly nor-mal random var...