International audienceAnomaly detection aims at declaring a query point as "normal" or not with respect to a nominal model. A non-parametric statistical test that allows the detection of anomalies given a set of (possibly high dimensional) sample points drawn from a nominal probability distribution is presented. Its test statistic is based on the distance between a query point, mapped in a feature space, and its projection on the eigen-structure of the kernel matrix computed on the sample points. The method is tested on both articial and benchmarked real data sets and demonstrates good performances regarding both type-I and type-II errors w.r.t. competing methods. This communication is based on a recently published paper by the same authors...
Anomaly detection when observing a large number of data streams is essential in a variety of applica...
Anomaly detection starts from a model of normal behavior and classifies departures from this model a...
One way to describe anomalies is by saying that anomalies are not concentrated. This leads to the pr...
International audienceAnomaly detection aims at declaring a query point as "normal" or not with resp...
International audienceA non-parametric statistical test that allows the detection of anomalies given...
International audienceWe propose a novel non-parametric statistical test that allows the detection o...
Abstract—An anomaly detection problem is investigated, in which there are totally n sequences, with ...
Anomaly detection is not only a useful preprocessing step for training machine learning algorithms. ...
The scan statistic is by far the most popular method for anomaly detection, being popular in syndrom...
The scan statistic is by far the most popular method for anomaly detection, being popular in syndrom...
La détection d anomalies à partir de quelques projections tomographiques bruitées est considérée d u...
We describe a probabilistic, nonparametric method for anomaly detection, based on a squared-loss obj...
Anomaly detection when observing a large number of data streams is essential in a variety of applica...
Anomaly detection starts from a model of normal behavior and classifies departures from this model a...
One way to describe anomalies is by saying that anomalies are not concentrated. This leads to the pr...
International audienceAnomaly detection aims at declaring a query point as "normal" or not with resp...
International audienceA non-parametric statistical test that allows the detection of anomalies given...
International audienceWe propose a novel non-parametric statistical test that allows the detection o...
Abstract—An anomaly detection problem is investigated, in which there are totally n sequences, with ...
Anomaly detection is not only a useful preprocessing step for training machine learning algorithms. ...
The scan statistic is by far the most popular method for anomaly detection, being popular in syndrom...
The scan statistic is by far the most popular method for anomaly detection, being popular in syndrom...
La détection d anomalies à partir de quelques projections tomographiques bruitées est considérée d u...
We describe a probabilistic, nonparametric method for anomaly detection, based on a squared-loss obj...
Anomaly detection when observing a large number of data streams is essential in a variety of applica...
Anomaly detection starts from a model of normal behavior and classifies departures from this model a...
One way to describe anomalies is by saying that anomalies are not concentrated. This leads to the pr...