基于图的物联网僵尸网络检测方法的对抗性攻击与防御

Quoc-Dung Ngo, Huy-Trung Nguyen, Viet-Dung Nguyen, C. Dinh, Anh-Tu Phung, Quy-Tung Bui
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引用次数: 3

摘要

为了降低僵尸网络恶意软件的风险,利用机器学习检测僵尸网络恶意软件的方法近年来受到了极大的关注。大多数传统方法都是基于监督学习,依赖于具有定义标签的静态特征。然而,最近的研究表明,基于监督机器学习的物联网恶意软件僵尸网络模型更容易受到故意攻击,即对抗性攻击。本文主要对基于psi图的对抗性攻击进行了研究。为了实现有效的攻击,我们提出了一种基于强化学习的方法,使用训练好的目标分类器来修改psi图的结构。我们证明了psi图容易受到这种攻击。讨论了利用对抗性训练训练防御模型的防御方法。实验结果在对抗数据集上达到94.1%的准确率;因此,表明我们的防御模型比以前的目标分类器鲁棒得多。
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Adversarial Attack and Defense on Graph-based IoT Botnet Detection Approach
To reduce the risk of botnet malware, methods of detecting botnet malware using machine learning have received enormous attention in recent years. Most of the traditional methods are based on supervised learning that relies on static features with defined labels. However, recent studies show that supervised machine learning-based IoT malware botnet models are more vulnerable to intentional attacks, known as an adversarial attack. In this paper, we study the adversarial attack on PSI-graph based researches. To perform the efficient attack, we proposed a reinforcement learning based method with a trained target classifier to modify the structures of PSI-graphs. We show that PSI-graphs are vulnerable to such attack. We also discuss about defense method which uses adversarial training to train a defensive model. Experiment result achieves 94.1% accuracy on the adversarial dataset; thus, shows that our defensive model is much more robust than the previous target classifier.
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