Anomaly detection in network flows using unsupervised online machine learning
By: Alberto Miguel-Diez , Adrián Campazas-Vega , Ángel Manuel Guerrero-Higueras and more
Potential Business Impact:
Finds computer network problems automatically.
Nowadays, the volume of network traffic continues to grow, along with the frequency and sophistication of attacks. This scenario highlights the need for solutions capable of continuously adapting, since network behavior is dynamic and changes over time. This work presents an anomaly detection model for network flows using unsupervised machine learning with online learning capabilities. This approach allows the system to dynamically learn the normal behavior of the network and detect deviations without requiring labeled data, which is particularly useful in real-world environments where traffic is constantly changing and labeled data is scarce. The model was implemented using the River library with a One-Class SVM and evaluated on the NF-UNSW-NB15 dataset and its extended version v2, which contain network flows labeled with different attack categories. The results show an accuracy above 98%, a false positive rate below 3.1%, and a recall of 100% in the most advanced version of the dataset. In addition, the low processing time per flow (<0.033 ms) demonstrates the feasibility of the approach for real-time applications.
Similar Papers
A systematic literature review of unsupervised learning algorithms for anomalous traffic detection based on flows
Cryptography and Security
Finds hidden internet dangers without knowing them first.
Binary Anomaly Detection in Streaming IoT Traffic under Concept Drift
Machine Learning (CS)
Finds weird internet traffic faster and cheaper.
Unsupervised anomaly detection on cybersecurity data streams: a case with BETH dataset
Cryptography and Security
Finds new computer attacks before they happen.