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An Adversarial Learning Model for Intrusion Detection in Real Complex Network Environments

机译:真实复杂网络环境中入侵检测的对抗学习模型

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Network intrusion detection plays an important role in network security. With the deepening of machine learning research, especially the generative adversarial networks (CAN) proposal, the stability of the anomaly detector is put forward for higher requirements. The main focus of this paper is on the security of machine learning based anomaly detectors. In order to detect the robustness of the existing advanced anomaly detection algorithm, we propose an anomaly detector attack framework MACGAN (maintain attack features based on the generative adversarial networks). The MACGAN framework consists of two parts. The first part is used to analyze the attack fields manually. Then, the learning function of GAN in the second part is used to bypass the anomaly detection. Our framework is tested on the latest Kitsune2018 and CICIDS2017 data sets. Experimental results demonstrate the ability to bypass the state-of-the-art machine learning algorithms. This greatly helps the network security researchers to improve the stability of the detector.
机译:网络入侵检测在网络安全中发挥着重要作用。随着机器学习研究的深入,特别是生成的对抗网络(CAN)提议,提出了异常探测器的稳定性,以获得更高的要求。本文的主要重点是基于机器学习的异常探测器的安全性。为了检测现有的高级异常检测算法的稳健性,我们提出了一种异常探测器攻击框架宏(基于生成的对抗网络维持攻击特征)。宏框架由两部分组成。第一部分用于手动分析攻击字段。然后,第二部分中GaN的学习功能用于绕过异常检测。我们的框架在最新的Kitsune2018和Cicids2017数据集上进行了测试。实验结果表明了绕过最先进的机器学习算法的能力。这极大地帮助网络安全研究人员提高了探测器的稳定性。

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