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U-ASG: A Universal Method to Perform Adversarial Attack on Autoencoder based Network Anomaly Detection Systems

机译:U-ASG:在基于自动编码器的网络异常检测系统上执行对抗攻击的通用方法

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Semi-supervised machine learning models, especially deep neural networks, have been widely used in network anomaly detection for their capability of capturing patterns in normal data. However, the models face security challenges when an attacker has obtained their full details. In this paper, we propose a universal adversarial sample generator (U-ASG), to perform white-box adversarial attacks on autoencoder-based semi-supervised network anomaly detection (SSNAD) systems. The purpose of adversarial attacks is to generate small adversarial perturbations and add them to targeted anomalous samples to fly under the radar. We model the generation process of adversarial perturbations as an optimization problem, in which we minimize the reconstruction errors of the adversarial samples through the trained autoencoder and approximate it to solve. Furthermore, to improve the attack performance against the variational autoencoder (VAE), which is robust to tiny perturbations through uncertainty modeling, we design a mechanism to weaken its robustness by introducing a variance regularizer to the optimization. Simulation results show that the adversarial attacks generated by our U-ASG can effectively degrade the performance of the autoencoder-based SSNAD systems.
机译:半监督机器学习模型(尤其是深度神经网络)因其捕获正常数据中的模式的能力而被广泛用于网络异常检测。但是,当攻击者获得完整的详细信息时,这些模型将面临安全挑战。在本文中,我们提出了一种通用对抗样本生成器(U-ASG),以在基于自动编码器的半监督网络异常检测(SSNAD)系统上执行白盒对抗攻击。对抗性攻击的目的是产生小的对抗性扰动,并将其添加到目标异常样本中以在雷达下飞行。我们将对抗性摄动的生成过程建模为一个优化问题,在该问题中,我们通过训练有素的自动编码器将对抗性样本的重构误差最小化,并对其进行近似求解。此外,为了提高针对可变自动编码器(VAE)的攻击性能(通过不确定性建模对微小扰动具有鲁棒性),我们设计了一种机制,通过在优化中引入方差正则化器来削弱其鲁棒性。仿真结果表明,由我们的U-ASG产生的对抗攻击可以有效地降低基于自动编码器的SSNAD系统的性能。

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