Pelican: A Deep Residual Network for Network Intrusion Detection

Peilun Wu, Hui Guo
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引用次数: 29

Abstract

One challenge for building a secure network communication environment is how to effectively detect and prevent malicious network behaviours. The abnormal network activities threaten users’ privacy and potentially damage the function and infrastructure of the whole network. To address this problem, the network intrusion detection system (NIDS) has been used. By continuously monitoring network activities, the system can timely identify attacks and prompt counter-attack actions. NIDS has been evolving over years. The current-generation NIDS incorporates machine learning (ML) as the core technology in order to improve the detection performance on novel attacks. However, the high detection rate achieved by a traditional ML-based detection method is often accompanied by large false-alarms, which greatly affects its overall performance. In this paper, we propose a deep neural network, Pelican, that is built upon specially-designed residual blocks. We evaluated Pelican on two network traffic datasets, NSL-KDD and UNSW-NB15. Our experiments show that Pelican can achieve a high attack detection performance while keeping a much low false alarm rate when compared with a set of up-to-date machine learning based designs.
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鹈鹕:用于网络入侵检测的深度残留网络
如何有效地检测和预防恶意网络行为是构建安全网络通信环境的挑战之一。异常的网络活动不仅威胁到用户的隐私,还可能破坏整个网络的功能和基础设施。为了解决这一问题,人们采用了网络入侵检测系统(NIDS)。通过对网络活动的持续监控,系统可以及时发现攻击,并及时采取反击行动。NIDS已经发展了多年。为了提高对新型攻击的检测性能,当前一代的网络入侵检测系统将机器学习作为核心技术。然而,传统的基于ml的检测方法在达到较高的检测率的同时,往往伴随着较大的虚警,这极大地影响了其整体性能。在本文中,我们提出了一个深度神经网络Pelican,它是建立在特殊设计的残差块之上的。我们在NSL-KDD和UNSW-NB15两个网络流量数据集上对Pelican进行了评估。我们的实验表明,与一组最新的基于机器学习的设计相比,Pelican可以实现高的攻击检测性能,同时保持低得多的误报率。
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