一种集网络级入侵检测和主机级入侵检测于一体的入侵检测系统

Jian K. Liu, Kun Xiao, Lei Luo, Yun Li, Lirong Chen
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引用次数: 11

摘要

随着互联网的快速发展,网络安全问题越来越受到人们的关注。入侵检测系统(IDS)是防御网络攻击和减少安全损失的有效技术。然而,入侵检测的挑战在于网络攻击者的多样性和数据的频繁变化,需要灵活高效的解决方案。为了解决这个问题,机器学习方法正在IDS领域得到应用。在本文中,我们提出了一个高效的可扩展的基于神经网络的混合入侵防御框架,该框架结合了主机级入侵防御(HIDS)和网络级入侵防御(NIDS)。我们将自编码器(AE)应用于NIDS,并利用词嵌入和卷积神经网络设计了HIDS。为了对IDS进行评估,在公共数据集NSL-KDD和ADFA上进行了大量实验。它能检测多种攻击,降低安全风险,效率高,可扩展性好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An intrusion detection system integrating network-level intrusion detection and host-level intrusion detection
With the rapid development of Internet, the issue of cyber security has increasingly gained more attention. An intrusion Detection System (IDS) is an effective technique to defend cyber-attacks and reduce security losses. However, the challenge of IDS lies in the diversity of cyber-attackers and the frequently-changing data requiring a flexible and efficient solution. To address this problem, machine learning approaches are being applied in the IDS field. In this paper, we propose an efficient scalable neural-network-based hybrid IDS framework with the combination of Host-level IDS (HIDS) and Network-level IDS (NIDS). We applied the autoencoders (AE) to NIDS and designed HIDS using word embedding and convolutional neural network. To evaluate the IDS, many experiments are performed on the public datasets NSL-KDD and ADFA. It can detect many attacks and reduce the security risk with high efficiency and excellent scalability.
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