The angular measure on the unit sphere characterizes the first-order dependence structure of the components of a random vector in extreme regions and is defined in terms of standardized margins. Its statistical recovery is an important step in learning problems involving observations far away from the center. In the common situation that the components of the vector have different distributions, the rank transformation offers a convenient and robust way of standardizing data in order to build an empirical version of the angular measure based on the most extreme observations. However, the study of the sampling distribution of the resulting empirical angular measure is challenging. It is the purpose of the paper to establish finite-sample bou...
This paper studies the asymptotic behaviors of the pairwise angles among n randomly and uniformly di...
The Angular Resolution Limit (ARL) is a fundamental statistical metric to quantify our ability to re...
AbstractWe present a new parametric model for the angular measure of a multivariate extreme value di...
The angular measure on the unit sphere characterizes the first-order dependence structure of the com...
Rotationally symmetric distributions on the unit hyperpshere are among the most commonly met in dire...
We investigate the behavior of the empirical minimization algorithm using various methods. We first ...
Extremes play a special role in Anomaly Detection. Beyond inference and simulation purposes, probabi...
The maximum a-posteriori (MAP) perturbation framework has emerged as a useful approach for inference...
The dependencies between power law parameters such as in-degree and PageRank, can be characterized b...
Motivated by the fact that circular or spherical data are often much concentrated around a location ...
New Vapnik–Chervonenkis type concentration inequalities are derived for the empirical distribution o...
In this thesis we consider concentration inequalities and the concentration of measure phenomenon f...
The hypothesis that high dimensional data tends to lie in the vicinity of a low di-mensional manifol...
In this paper we tackle the problem of testing the homogeneity of concentrations for directional dat...
We propose a spectral clustering algorithm for analyzing the dependence structure of multivariate ex...
This paper studies the asymptotic behaviors of the pairwise angles among n randomly and uniformly di...
The Angular Resolution Limit (ARL) is a fundamental statistical metric to quantify our ability to re...
AbstractWe present a new parametric model for the angular measure of a multivariate extreme value di...
The angular measure on the unit sphere characterizes the first-order dependence structure of the com...
Rotationally symmetric distributions on the unit hyperpshere are among the most commonly met in dire...
We investigate the behavior of the empirical minimization algorithm using various methods. We first ...
Extremes play a special role in Anomaly Detection. Beyond inference and simulation purposes, probabi...
The maximum a-posteriori (MAP) perturbation framework has emerged as a useful approach for inference...
The dependencies between power law parameters such as in-degree and PageRank, can be characterized b...
Motivated by the fact that circular or spherical data are often much concentrated around a location ...
New Vapnik–Chervonenkis type concentration inequalities are derived for the empirical distribution o...
In this thesis we consider concentration inequalities and the concentration of measure phenomenon f...
The hypothesis that high dimensional data tends to lie in the vicinity of a low di-mensional manifol...
In this paper we tackle the problem of testing the homogeneity of concentrations for directional dat...
We propose a spectral clustering algorithm for analyzing the dependence structure of multivariate ex...
This paper studies the asymptotic behaviors of the pairwise angles among n randomly and uniformly di...
The Angular Resolution Limit (ARL) is a fundamental statistical metric to quantify our ability to re...
AbstractWe present a new parametric model for the angular measure of a multivariate extreme value di...