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Def-IDS: An Ensemble Defense Mechanism Against Adversarial Attacks for Deep Learning-based Network Intrusion Detection

机译:DEF-ID:针对基于深度学习的网络入侵检测的对抗攻击的集成防御机制

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Network intrusion detection plays an important role in the Internet of Things systems for protecting devices from security breaches. Facing challenges of the rapidly increasing amount of diverse network traffic, recent research has employed end-to-end deep learning-based intrusion detectors for automatic feature extraction and high detection accuracy. However, deep learning has been proved vulnerable to adversarial attacks that may cause misclassification by imposing imperceptible perturbation on input samples. Though such vulnerability is widely discussed in the image processing domain, very few studies have investigated its perniciousness against network intrusion detection systems (NIDS) and proposed corresponding defense strategies. In this paper, we try to fill this gap by proposing Def-IDS, an ensemble defense mechanism specially designed for NIDS, against both known and unknown adversarial attacks. It is a two-module training framework that integrates multi-class generative adversarial networks and multi-source adversarial retraining to improve model robustness, while the detection accuracy on unperturbed samples is maintained. We evaluate the mechanism over CSE-CIC-IDS2018 dataset and compare its performance with the other three defense methods. The results demonstrate that Def-IDS is able to detect various adversarial attacks with better precision, recall, F1 score, and accuracy.
机译:网络入侵检测在用于保护设备免受安全漏洞的设备系统中起重要作用。面对迅速增加的多样化网络流量的挑战,最近的研究采用了基于端到端的深度学习的入侵探测器,用于自动特征提取和高检测精度。然而,已经证明了深入学习易受对抗的攻击攻击,这可能会通过对输入样品造成难以察觉的扰动来造成错误分类。虽然在图像处理领域中广泛讨论此类漏洞,但很少有研究已经调查了对网络入侵检测系统(NID)的知情,并提出了相应的防御策略。在本文中,我们尝试通过提出DEF-ID来填补这种差距,这是针对知名和未知的对抗性攻击而专门设计的集成防御机制。它是一个双模块训练框架,它集成了多级生成的对抗性网络和多源对抗刷新以改善模型稳健性,而维持不受干扰样本的检测精度。我们评估CSE-CIC-IDS2018数据集的机制,并将其性能与其他三种防御方法进行比较。结果表明,DEF-ID能够以更好的精度,召回,F1分数和准确性来检测各种对抗性攻击。

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