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Intrusion Detection Using Disagreement-Based Semi-supervised Learning: Detection Enhancement and False Alarm Reduction

机译:使用基于分歧的半监督学习的入侵检测:检测增强和误报例减少

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With the development of intrusion detection systems (IDSs), a number of machine learning approaches have been applied to intrusion detection. For a traditional supervised learning algorithm, training examples with ground-truth labels should be given in advance. However, in real applications, the number of labeled examples is limited whereas a lot of unlabeled data is widely available, because labeling data requires a large amount of human efforts and is thus very expensive. To mitigate this issue, several semi-supervised learning algorithms, which aim to label data automatically without human intervention, have been proposed to utilize unlabeled data in improving the performance of IDSs. In this paper, we attempt to apply disagreement-based semi-supervised learning algorithm to anomaly detection. Based on our previous work, we further apply this approach to constructing a false alarm filter and investigate its performance of alarm reduction in a network environment. The experimental results show that the disagreement-based scheme is very effective in detecting intrusions and reducing false alarms by automatically labeling unlabeled data, and that its performance can further be improved by co-working with active learning.
机译:随着入侵检测系统(IDS)的发展,已经应用了许多机器学习方法对入侵检测。对于传统的监督学习算法,应提前给出具有地面真理标签的培训示例。然而,在实际应用中,标记的示例的数量是有限的,而许多未标记的数据是广泛的可用的,因为标签数据需要大量的人类努力,因此非常昂贵。为了减轻这个问题,已经提出了几种半监督学习算法,其目的是在没有人为干预的情况下自动标记数据,以利用未标记的数据来提高IDS的性能。在本文中,我们试图将基于分类的半监督学习算法应用于异常检测。基于我们以前的工作,我们进一步应用了这种方法来构建虚假警报过滤器,并调查其在网络环境中报警减少的性能。实验结果表明,基于分歧的方案在检测入侵和通过自动标记未标记的数据来减少错误警报,并且通过与主动学习共同合作,可以进一步提高其性能。

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