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Hardening Random Forest Cyber Detectors Against Adversarial Attacks

机译:硬化随机森林网络探测器免受对抗攻击

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摘要

Machine learning algorithms are effective in several applications, but they are not as much successful when applied to intrusion detection in cyber security. Due to the high sensitivity to their training data, cyber detectors based on machine learning are vulnerable to targeted adversarial attacks that involve the perturbation of initial samples. Existing defenses assume unrealistic scenarios; their results are underwhelming in non-adversarial settings; or they can be applied only to machine learning algorithms that perform poorly for cyber security. We present an original methodology for countering adversarial perturbations targeting intrusion detection systems based on random forests. As a practical application, we integrate the proposed defense method in a cyber detector analyzing network traffic. The experimental results on millions of labelled network flows show that the new detector has a twofold value: it outperforms state-of-the-art detectors that are subject to adversarial attacks; it exhibits robust results both in adversarial and non-adversarial scenarios.
机译:机器学习算法在若干应用中是有效的,但在网络安全中应用于入侵检测时它们并不同样成功。由于对其培训数据的敏感性高,基于机器学习的网络探测器容易受到涉及初始样本的扰动的靶向的对抗性攻击。现有的防御假设不切实际的情景;它们的结果在非对抗性环境中是强大的;或者它们只能应用于对网络安全性不好的机器学习算法。我们提出了一种原始方法,用于基于随机森林对抗侵扰检测系统的对抗扰动。作为一个实际应用,我们将建议的防御方法集成在网络探测器中分析网络流量。对数百万标记的网络流的实验结果表明,新探测器具有双重值:它优于遭受对抗性攻击的最先进的探测器;它表现出对抗性和非对抗方案的强大结果。

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