基于迁移深度学习的入侵检测系统

X. Sun, W. Meng, Wei-Yang Chiu, Brooke Lampe
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引用次数: 3

摘要

随着物联网(IoT)的发展,网络安全变得非常重要,因为网络攻击者很容易破坏这种分布式网络和系统。入侵检测系统(IDS)是检测恶意流量的基本和必不可少的安全机制。在文献中,除了传统的机器学习算法外,还研究了许多深度学习方案来提高检测性能。然而,标签样本数量不足仍然是现实世界实现的一个挑战,特别是在智能家居和车联网等一些场景中。为了解决这个问题,我们探索迁移学习作为一个有前途的解决方案。在这项工作中,我们开发了TDL-IDS,这是一种基于迁移深度学习的IDS,可以处理有限的标记数据项。我们的方法首先使用长短期记忆(LSTM)在源域训练模型,然后利用迁移学习在目标域继续训练过程。在评估中,我们使用NSL-KDD作为源域,AWID作为目标域。我们的结果表明,TDL-IDS可以胜过许多类似的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TDL-IDS: Towards A Transfer Deep Learning based Intrusion Detection System
With the development of Internet of Things (IoT), network security has become very important as cyber-attackers can easily compromise such distributed networks and systems. An intrusion detection system (IDS) is a basic and essential security mechanism to detect malicious traffic. In the literature, in addition to traditional machine learning algorithms, many deep learning schemes have been examined to enhance the detection performance. However, insufficient amounts of labeled samples are still a challenge for real-world implementation, especially in some scenarios such as smart home and Internet of Vehicles. To address this issue, we explore transfer learning as a promising solution. In this work, we develop TDL-IDS, a transfer deep learning based IDS that can work with limited labeled data items. Our approach first uses Long Short Term Memory (LSTM) to train a model on the source domain and then leverages transfer learning to continue the training process on the target domain. In the evaluation, we use NSL-KDD as the source domain, and AWID as the target domain. Our results indicate that TDL-IDS can outperform many similar approaches.
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