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Adversarial Training for Deep Learning-based Intrusion Detection Systems

Authors:
Islam Debicha
Thibault Debatty
Jean-Michel Dricot
Wim Mees

Keywords: Intrusion detection; deep learning; Adversarial attacks; Adversarial training.

Abstract:
Nowadays, Deep Neural Networks (DNNs) report state-of-the-art results in many machine learning areas, including intrusion detection. Nevertheless, recent studies in computer vision have shown that DNNs can be vulnerable to adversarial attacks that are capable of deceiving them into misclassification by injecting specially crafted data. In security-critical areas, such attacks can cause serious damage; therefore, in this paper, we examine the effect of adversarial attacks on deep learning-based intrusion detection. In addition, we investigate the effectiveness of adversarial training as a defense against such attacks. Experimental results show that with sufficient distortion, adversarial examples are able to mislead the detector and that the use of adversarial training can improve the robustness of intrusion detection.

Pages: 45 to 49

Copyright: Copyright (c) IARIA, 2021

Publication date: April 18, 2021

Published in: conference

ISSN: 2308-4243

ISBN: 978-1-61208-838-9

Location: Porto, Portugal

Dates: from April 18, 2021 to April 22, 2021