The nonparametric problem of detecting existence of an anomalous interval over a one-dimensional line network is studied. Nodes corresponding to an anomalous interval (if one exists) receive samples generated by a distribution q, which is different from the distribution p that generates samples for other nodes. If an anomalous interval does not exist, then all nodes receive samples generated by p. It is assumed that the distributions p and q are arbitrary, and are unknown. In order to detect whether an anomalous interval exists, a test is built based on mean embeddings of distributions into a reproducing kernel Hilbert space (RKHS) and the metric of maximum mean discrepancy (MMD). It is shown that as the network size n goes to infinity, if ...
International audienceThis paper addresses the problem of multiple hypothesis testing (detection and...
Possibility theory can be used as a suitable frameworkto build a normal behavioral model for an anom...
Principal component analysis and the residual error is an effective anomaly detection technique. In ...
Abstract—An anomaly detection problem is investigated, in which there are totally n sequences, with ...
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...
We describe a probabilistic, nonparametric method for anomaly detection, based on a squared-loss obj...
This paper presents an unsupervised, density-based approach to anomaly detection. The purpose is to ...
Anomalies are patterns in data or events which are unlikely to appear under normal conditions. It is...
Abstract—Detection of traffic anomalies is an important problem that has been the focus of considera...
Two major security challenges in information systems are detection of anomalous data patterns that r...
In the last years, the problem of detecting anomalies and attacks by statistically inspecting the ne...
This work studies systems and methods for anomaly detection in computer networks. At first, basic ca...
Anomaly detection when observing a large number of data streams is essential in a variety of applica...
Anomaly detection is an important aspect of data analysis in order to identify data items that signi...
International audienceThis paper addresses the problem of multiple hypothesis testing (detection and...
Possibility theory can be used as a suitable frameworkto build a normal behavioral model for an anom...
Principal component analysis and the residual error is an effective anomaly detection technique. In ...
Abstract—An anomaly detection problem is investigated, in which there are totally n sequences, with ...
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...
We describe a probabilistic, nonparametric method for anomaly detection, based on a squared-loss obj...
This paper presents an unsupervised, density-based approach to anomaly detection. The purpose is to ...
Anomalies are patterns in data or events which are unlikely to appear under normal conditions. It is...
Abstract—Detection of traffic anomalies is an important problem that has been the focus of considera...
Two major security challenges in information systems are detection of anomalous data patterns that r...
In the last years, the problem of detecting anomalies and attacks by statistically inspecting the ne...
This work studies systems and methods for anomaly detection in computer networks. At first, basic ca...
Anomaly detection when observing a large number of data streams is essential in a variety of applica...
Anomaly detection is an important aspect of data analysis in order to identify data items that signi...
International audienceThis paper addresses the problem of multiple hypothesis testing (detection and...
Possibility theory can be used as a suitable frameworkto build a normal behavioral model for an anom...
Principal component analysis and the residual error is an effective anomaly detection technique. In ...