We consider the problem of network anomaly detection in large distributed systems. In this setting, Principal Component Analysis (PCA) has been proposed as a method for discovering anomalies by continuously tracking the projection of the data onto a residual subspace. This method was shown to work well empirically in highly aggregated networks, that is, those with a limited number of large nodes and at coarse time scales. This approach, however, has scalability limitations. To overcome these limitations, we develop a PCA-based anomaly detector in which adaptive local data filters send to a coordinator just enough data to enable accurate global detection. Our method is based on a stochastic matrix perturbation analysis that characterizes the...
This paper presents a novel method to enhance the performance of Clustering-based Autoencoder models...
International audienceThe crucial future role of Internet in society makes of network monitoring a c...
The rising complexity of network anomalies necessitates increased attention to developing new techni...
We consider the problem of network anomaly detection in large distributed systems. In this setting, ...
Abstract—There has been growing interest in building largescale distributed monitoring systems for s...
Principal component analysis and the residual error is an effective anomaly detection technique. In ...
Detecting anomalous traffic is a crucial part of managing IP networks. In recent years, network-wide...
In the last years, the problem of detecting anomalies and attacks by statistically inspecting the ne...
As the number, complexity and diversity of cyber threats continue to increase in network infrastruct...
Statistical Machine Learning methods are employed to improve network security (email spam filtering,...
The multivariate approach based on Principal Component Analysis (PCA) for anomaly detection received...
In this paper we present a distributed mechanism based on Principal Component Analysis (PCA) to prof...
Principal component analysis (PCA) has received increasing attention as a method to distinguish netw...
Nowadays, Internet has serious security problems and net-work failures that are hard to resolve, for...
International audienceSpatial Principal Component Analysis (PCA) has been proposed for network-wide ...
This paper presents a novel method to enhance the performance of Clustering-based Autoencoder models...
International audienceThe crucial future role of Internet in society makes of network monitoring a c...
The rising complexity of network anomalies necessitates increased attention to developing new techni...
We consider the problem of network anomaly detection in large distributed systems. In this setting, ...
Abstract—There has been growing interest in building largescale distributed monitoring systems for s...
Principal component analysis and the residual error is an effective anomaly detection technique. In ...
Detecting anomalous traffic is a crucial part of managing IP networks. In recent years, network-wide...
In the last years, the problem of detecting anomalies and attacks by statistically inspecting the ne...
As the number, complexity and diversity of cyber threats continue to increase in network infrastruct...
Statistical Machine Learning methods are employed to improve network security (email spam filtering,...
The multivariate approach based on Principal Component Analysis (PCA) for anomaly detection received...
In this paper we present a distributed mechanism based on Principal Component Analysis (PCA) to prof...
Principal component analysis (PCA) has received increasing attention as a method to distinguish netw...
Nowadays, Internet has serious security problems and net-work failures that are hard to resolve, for...
International audienceSpatial Principal Component Analysis (PCA) has been proposed for network-wide ...
This paper presents a novel method to enhance the performance of Clustering-based Autoencoder models...
International audienceThe crucial future role of Internet in society makes of network monitoring a c...
The rising complexity of network anomalies necessitates increased attention to developing new techni...