National audienceIt is difficult to detect new types of attacks in heterogeneous and scalable networks in time without generating too many false alarms. While supervised anomaly detection techniques are often used to that end, security experts generally do not have labeled datasets. That's why unsupervised learning, that does not require labeled data, should be preferred. With sec2graph [4], we introduced a representation of security events in the form of a graph linking what we defined as security objects and proposed a method for anomaly detection based on auto-encoders. This representation allows a rich description of the events that are analyzed. In this paper, we apply our approach to the CICIDS2018 dataset and show that our method out...
International audienceDespite fruitful achievements made by unsupervised machine learning-based anom...
International audienceDespite fruitful achievements made by unsupervised machine learning-based anom...
International audienceDespite fruitful achievements made by unsupervised machine learning-based anom...
National audienceIt is difficult to detect new types of attacks in heterogeneous and scalable networ...
National audienceIt is difficult to detect new types of attacks in heterogeneous and scalable networ...
International audienceDetecting attacks against information systems is hard because of the highly di...
International audienceDetecting attacks against information systems is hard because of the highly di...
National audienceIt is difficult to detect new types of attacks in heterogeneous and scalable networ...
International audienceDetecting attacks against information systems is hard because of the highly di...
Detecting anomalies and events in data is a vital task, with numerous applications in security, fina...
The general objective of this thesis is to evaluate the interest of graph structures in the field of...
The general objective of this thesis is to evaluate the interest of graph structures in the field of...
The general objective of this thesis is to evaluate the interest of graph structures in the field of...
The general objective of this thesis is to evaluate the interest of graph structures in the field of...
The general objective of this thesis is to evaluate the interest of graph structures in the field of...
International audienceDespite fruitful achievements made by unsupervised machine learning-based anom...
International audienceDespite fruitful achievements made by unsupervised machine learning-based anom...
International audienceDespite fruitful achievements made by unsupervised machine learning-based anom...
National audienceIt is difficult to detect new types of attacks in heterogeneous and scalable networ...
National audienceIt is difficult to detect new types of attacks in heterogeneous and scalable networ...
International audienceDetecting attacks against information systems is hard because of the highly di...
International audienceDetecting attacks against information systems is hard because of the highly di...
National audienceIt is difficult to detect new types of attacks in heterogeneous and scalable networ...
International audienceDetecting attacks against information systems is hard because of the highly di...
Detecting anomalies and events in data is a vital task, with numerous applications in security, fina...
The general objective of this thesis is to evaluate the interest of graph structures in the field of...
The general objective of this thesis is to evaluate the interest of graph structures in the field of...
The general objective of this thesis is to evaluate the interest of graph structures in the field of...
The general objective of this thesis is to evaluate the interest of graph structures in the field of...
The general objective of this thesis is to evaluate the interest of graph structures in the field of...
International audienceDespite fruitful achievements made by unsupervised machine learning-based anom...
International audienceDespite fruitful achievements made by unsupervised machine learning-based anom...
International audienceDespite fruitful achievements made by unsupervised machine learning-based anom...