In this paper we present methodological advances in anomaly detection tailored to discover abnormal traffic patterns under the presence of seasonal trends in data. In our setup we impose specific assumptions on the traffic type and nature; our study features VoIP call counts, for which several traces of real data has been used in this study, but the methodology can be applied to any data following, at least roughly, a non-homogeneous Poisson process (think of highly aggregated traffic flows). A performance study of the proposed methods, covering situations in which the assumptions are fulfilled as well as violated, shows good results in great generality. Finally, a real data example is included showing how the system could be implemented in...
We consider the problem of traffic anomaly detection in IP networks. Traffic anomalies typically ari...
Time-series of count data occur in many different contexts, including internet navigation logs, free...
We describe and validate a novel data-driven approach to the real time detection and classification ...
In this paper we present methodological advances in anomaly detection tailored to discover abnormal ...
Abstract—In this paper we present methodological advances in anomaly detection, which, among other p...
In this paper we present methodological advances in anomaly detection, which, among other purposes, ...
Abstract—In this paper a few methods for anomaly detection in computer networks with the use of time...
Abstract—We propose two methods for traffic anomaly detection in communication networks where proper...
International audienceTraffic variation is one of the important components of the network behavior. ...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables ...
Multivariate time series traffic dataset is usually large with multiple feature dimensions for long ...
We propose two robust methods for anomaly detection in dynamic networks in which the properties of n...
International audienceIn this work we develop an approach for anomaly detection for large scale netw...
Trajectory data is becoming more and more popular nowadays and extensive studies have been conducted...
Dynamic networks, also called network streams, are an im-portant data representation that applies to...
We consider the problem of traffic anomaly detection in IP networks. Traffic anomalies typically ari...
Time-series of count data occur in many different contexts, including internet navigation logs, free...
We describe and validate a novel data-driven approach to the real time detection and classification ...
In this paper we present methodological advances in anomaly detection tailored to discover abnormal ...
Abstract—In this paper we present methodological advances in anomaly detection, which, among other p...
In this paper we present methodological advances in anomaly detection, which, among other purposes, ...
Abstract—In this paper a few methods for anomaly detection in computer networks with the use of time...
Abstract—We propose two methods for traffic anomaly detection in communication networks where proper...
International audienceTraffic variation is one of the important components of the network behavior. ...
This thesis proposes methodologies to monitor traffic anomalies using microscopic traffic variables ...
Multivariate time series traffic dataset is usually large with multiple feature dimensions for long ...
We propose two robust methods for anomaly detection in dynamic networks in which the properties of n...
International audienceIn this work we develop an approach for anomaly detection for large scale netw...
Trajectory data is becoming more and more popular nowadays and extensive studies have been conducted...
Dynamic networks, also called network streams, are an im-portant data representation that applies to...
We consider the problem of traffic anomaly detection in IP networks. Traffic anomalies typically ari...
Time-series of count data occur in many different contexts, including internet navigation logs, free...
We describe and validate a novel data-driven approach to the real time detection and classification ...