Nondegenerate covariance, correlation and spectral density matrices are necessarily symmetric or Hermitian and positive definite. This paper develops statistical data depths for collections of Hermitian positive definite matrices by exploiting the geometric structure of the space as a Riemannian manifold. The depth functions allow one to naturally characterize most central or outlying matrices, but also provide a practical framework for inference in the context of samples of positive definite matrices. First, the desired properties of an intrinsic data depth function acting on the space of Hermitian positive definite matrices are presented. Second, we propose two pointwise and integrated data depth functions that satisfy each of these requi...
AbstractThe set of Hermitian positive-definite matrices plays fundamental roles in many disciplines ...
This survey contains a selection of topics unified by the concept of positive semi-definiteness (of ...
In this paper, we aim to construct a deep neural network which embeds high dimensional symmetric pos...
Nondegenerate covariance, correlation, and spectral density matrices are necessarily symmetric or He...
Indefinite symmetric matrices that are estimates of positive definite population matrices occur in a...
Indefinite symmetric matrices that are estimates of positive definite population matrices occur in a...
Indefinite symmetric matrices that are estimates of positive definite population matrices occur in a...
International audienceIn this paper, we introduce properly-invariant diagonality measures of Hermiti...
International audienceIn this paper, we introduce properly-invariant diagonality measures of Hermiti...
Over the last two decades, the research community has witnessed extensive research growth in the fie...
Hermitian positive definite (hpd) matrices recur throughout machine learning, statistics, and optimi...
Hermitian positive definite (hpd) matrices recur throughout machine learning, statistics, and optimi...
The aim of this paper is to develop an intrinsic regression model for the analysis of positive-defin...
This dissertation is motivated by addressing the statistical analysis of symmetric positive definite...
The aim of this paper is to develop an intrinsic regression model for the analysis of positive-defin...
AbstractThe set of Hermitian positive-definite matrices plays fundamental roles in many disciplines ...
This survey contains a selection of topics unified by the concept of positive semi-definiteness (of ...
In this paper, we aim to construct a deep neural network which embeds high dimensional symmetric pos...
Nondegenerate covariance, correlation, and spectral density matrices are necessarily symmetric or He...
Indefinite symmetric matrices that are estimates of positive definite population matrices occur in a...
Indefinite symmetric matrices that are estimates of positive definite population matrices occur in a...
Indefinite symmetric matrices that are estimates of positive definite population matrices occur in a...
International audienceIn this paper, we introduce properly-invariant diagonality measures of Hermiti...
International audienceIn this paper, we introduce properly-invariant diagonality measures of Hermiti...
Over the last two decades, the research community has witnessed extensive research growth in the fie...
Hermitian positive definite (hpd) matrices recur throughout machine learning, statistics, and optimi...
Hermitian positive definite (hpd) matrices recur throughout machine learning, statistics, and optimi...
The aim of this paper is to develop an intrinsic regression model for the analysis of positive-defin...
This dissertation is motivated by addressing the statistical analysis of symmetric positive definite...
The aim of this paper is to develop an intrinsic regression model for the analysis of positive-defin...
AbstractThe set of Hermitian positive-definite matrices plays fundamental roles in many disciplines ...
This survey contains a selection of topics unified by the concept of positive semi-definiteness (of ...
In this paper, we aim to construct a deep neural network which embeds high dimensional symmetric pos...