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Two Stage Anomaly Detection for Network Intrusion Detection

Authors
Neuschmied, Helmut; Winter, Martin; Hofer-Schmitz, Katharina; Stojanovic, Branka; Keb, Ulrike
Abstract:
Network intrusion detection is one of the most import tasks in today’s cyber-security defence applications. Inthe field of unsupervised learning methods, variants of variational autoencoders promise good results. The factthat these methods are very computationally time-consuming is hardly considered in the literature. Therefore,we propose a new two-stage approach combining a fast preprocessing or filtering method with a variationalautoencoder using reconstruction probability. We investigate several types of anomaly detection methodsmainly based on autoencoders to select a pre-filtering method and to evaluate the performance of our concepton two well established datasets.
Title:
Two Stage Anomaly Detection for Network Intrusion Detection
Publikationsdatum
2021

Publikationsreihe

Proceedings
ICISSP 2021 Interan
More files and links
Jahr/Monat:
2021

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