Detecting Adversarial DDoS Attacks in Software- Defined Networking Using Deep Learning Techniques and Adversarial Training

Beny Nugraha, Naina Kulkarni, Akash Gopikrishnan
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引用次数: 11

Abstract

In recent years, Deep Learning (DL) has been utilized for cyber-attack detection mechanisms as it offers highly accurate detection and is able to overcome the limitations of standard machine learning techniques. When applied in a Software-Defined Network (SDN) environment, a DL-based detection mechanism shows satisfying detection performance. However, in the case of adversarial attacks, the detection performance deteriorates. Therefore, in this paper, first, we outline a highly accurate flooding DDoS attack detection framework based on DL for SDN environments. Second, we investigate the performance degradation of our detection framework when being tested with two adversary traffic datasets. Finally, we evaluate three adversarial training procedures for improving the detection performance of our framework concerning adversarial attacks. It is shown that the application of one of the adversarial training procedures can avoid detection performance degradation and thus might be used in a real-time detection system based on continual learning.
使用深度学习技术和对抗性训练检测软件定义网络中的对抗性DDoS攻击
近年来,深度学习(DL)已被用于网络攻击检测机制,因为它提供了高度准确的检测,并且能够克服标准机器学习技术的局限性。在软件定义网络(SDN)环境下,基于dl的检测机制显示出令人满意的检测性能。然而,在对抗性攻击的情况下,检测性能会下降。因此,在本文中,我们首先概述了一个基于深度学习的SDN环境下高精度的洪水式DDoS攻击检测框架。其次,我们研究了在使用两个敌对流量数据集进行测试时检测框架的性能下降。最后,我们评估了三种对抗性训练程序,以提高我们的对抗性攻击框架的检测性能。结果表明,使用其中一种对抗训练方法可以避免检测性能下降,因此可以用于基于持续学习的实时检测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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