保护基于OC-SVM的IDS免受投毒攻击

Lu Zhang, R. Cushing, P. Grosso
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引用次数: 0

摘要

机器学习技术被广泛应用于网络安全领域的入侵检测。然而,大多数机器学习模型容易受到中毒攻击,其中恶意样本被注入训练数据集中以操纵分类器的性能。在本文中,我们首先使用ADLA-FD公共数据集和真实世界数据集评估了3种不同中毒策略下OC-SVM分类器的精度退化。其次,我们提出了一种基于DBSCAN聚类算法的净化机制。此外,我们还研究了不同距离度量和不同降维技术的影响,并评估了DBSCAN参数的灵敏度。实验结果表明,中毒攻击在很大程度上降低了OC-SVM分类器的性能,在大多数情况下准确率为0.5。所提出的消毒方法可以有效地过滤出两个数据集的有毒样本。消毒后的精度与原值非常接近甚至更高。
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Defending OC-SVM based IDS from poisoning attacks
Machine learning techniques are widely used to detect intrusions in the cyber security field. However, most machine learning models are vulnerable to poisoning attacks, in which malicious samples are injected into the training dataset to manipulate the classifier's performance. In this paper, we first evaluate the accuracy degradation of OC-SVM classifiers with 3 different poisoning strategies with the ADLA-FD public dataset and a real world dataset. Secondly, we propose a saniti-zation mechanism based on the DBSCAN clustering algorithm. In addition, we investigate the influences of different distance metrics and different dimensionality reduction techniques and evaluate the sensitivity of the DBSCAN parameters. The ex-perimental results show that the poisoning attacks can degrade the performance of the OC-SVM classifier to a large degree, with an accuracy equal to 0.5 in most settings. The proposed sanitization method can filter out poisoned samples effectively for both datasets. The accuracy after sanitization is very close or even higher to the original value.
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