Extremes play a special role in Anomaly Detection. Beyond inference and simulation purposes, probabilistic tools borrowed from Extreme Value Theory (EVT), such as the angular measure, can also be used to design novel statistical learning methods for Anomaly Detection/ranking. This paper proposes a new algorithm based on multivariate EVT to learn how to rank observations in a high dimensional space with respect to their degree of 'abnormality'. The procedure relies on an original dimension-reduction technique in the extreme domain that possibly produces a sparse representation of multivariate extremes and allows to gain insight into the dependence structure thereof, escaping the curse of dimensionality. The representation output by the unsup...
We propose a spectral clustering algorithm for analyzing the dependence structure of multivariate ex...
Nous présentons et étudions des méthodes d’apprentissage non-supervisé de phénomènes extrêmes multiv...
© 2016 Stijn Luca, David Clifton and Bart Vanrumste. Novelty detection or one-class classification s...
International audienceExtreme regions in the feature space are of particular concern for anomaly det...
International audienceIn a wide variety of situations, anomalies in the behaviour of a complex syste...
In a wide variety of situations, anomalies in the behaviour of a complex system, whose health is mon...
Extreme Value Theory (EVT) describes the distribution of data considered extreme with respect to som...
We present and study unsupervised learning methods of multivariate extreme phenomena in high-dimensi...
Extreme Value Theory (EVT) describes the distribution of data considered extreme with respect to som...
Identifying directions where extreme events occur is a major challenge in multivariate extreme value...
International audienceNon-parametric assessment of extreme dependence structures between an arbitrar...
Novelty detection is often used for analysis where there are insufficient examples of "abnormal" dat...
Learning how to rank multivariate unlabeled observations depending on their degree of abnormality/no...
Novelty detection, one-class classification, or outlier detection, is typically employed for analysi...
Extreme value theory (EVT) is a branch of statistics which concerns the distributions of data of unu...
We propose a spectral clustering algorithm for analyzing the dependence structure of multivariate ex...
Nous présentons et étudions des méthodes d’apprentissage non-supervisé de phénomènes extrêmes multiv...
© 2016 Stijn Luca, David Clifton and Bart Vanrumste. Novelty detection or one-class classification s...
International audienceExtreme regions in the feature space are of particular concern for anomaly det...
International audienceIn a wide variety of situations, anomalies in the behaviour of a complex syste...
In a wide variety of situations, anomalies in the behaviour of a complex system, whose health is mon...
Extreme Value Theory (EVT) describes the distribution of data considered extreme with respect to som...
We present and study unsupervised learning methods of multivariate extreme phenomena in high-dimensi...
Extreme Value Theory (EVT) describes the distribution of data considered extreme with respect to som...
Identifying directions where extreme events occur is a major challenge in multivariate extreme value...
International audienceNon-parametric assessment of extreme dependence structures between an arbitrar...
Novelty detection is often used for analysis where there are insufficient examples of "abnormal" dat...
Learning how to rank multivariate unlabeled observations depending on their degree of abnormality/no...
Novelty detection, one-class classification, or outlier detection, is typically employed for analysi...
Extreme value theory (EVT) is a branch of statistics which concerns the distributions of data of unu...
We propose a spectral clustering algorithm for analyzing the dependence structure of multivariate ex...
Nous présentons et étudions des méthodes d’apprentissage non-supervisé de phénomènes extrêmes multiv...
© 2016 Stijn Luca, David Clifton and Bart Vanrumste. Novelty detection or one-class classification s...