Computer Science > Machine Learning
[Submitted on 3 May 2022 (v1), last revised 14 Dec 2022 (this version, v3)]
Title:ARCADE: Adversarially Regularized Convolutional Autoencoder for Network Anomaly Detection
View PDFAbstract:As the number of heterogenous IP-connected devices and traffic volume increase, so does the potential for security breaches. The undetected exploitation of these breaches can bring severe cybersecurity and privacy risks. Anomaly-based \acp{IDS} play an essential role in network security. In this paper, we present a practical unsupervised anomaly-based deep learning detection system called ARCADE (Adversarially Regularized Convolutional Autoencoder for unsupervised network anomaly DEtection). With a convolutional \ac{AE}, ARCADE automatically builds a profile of the normal traffic using a subset of raw bytes of a few initial packets of network flows so that potential network anomalies and intrusions can be efficiently detected before they cause more damage to the network. ARCADE is trained exclusively on normal traffic. An adversarial training strategy is proposed to regularize and decrease the \ac{AE}'s capabilities to reconstruct network flows that are out-of-the-normal distribution, thereby improving its anomaly detection capabilities. The proposed approach is more effective than state-of-the-art deep learning approaches for network anomaly detection. Even when examining only two initial packets of a network flow, ARCADE can effectively detect malware infection and network attacks. ARCADE presents 20 times fewer parameters than baselines, achieving significantly faster detection speed and reaction time.
Submission history
From: Willian T. Lunardi [view email][v1] Tue, 3 May 2022 11:47:36 UTC (573 KB)
[v2] Fri, 13 May 2022 10:33:05 UTC (573 KB)
[v3] Wed, 14 Dec 2022 06:07:21 UTC (573 KB)
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