MLSEC - Benchmarking Shallow and Deep Machine Learning Models for Network Security

P. Casas, Gonzalo Marín, G. Capdehourat, Maciej Korczyński
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引用次数: 3

Abstract

Network security represents a keystone to ISPs, who need to cope with an increasing number of network attacks that put the network's integrity at risk. The high-dimensionality of network data provided by current network monitoring systems opens the door to the massive application of Machine Learning (ML) approaches to improve the detection and classification of network attacks. In recent years, machine learning-based systems have gained popularity for network security applications, usually considering the application of shallow models, where a set of expert handcrafted features are needed to pre-process the data before training. Deep Learning (DL) models can alleviate the need of domain expert knowledge by relying on their ability to learn feature representations from input raw or basic, non-processed data. Still, it is not clear today which is the best model or best model-category to manage network security, as in general, only adhoc and tailored approaches have been proposed and evaluated so far. In this paper we train and benchmark different ML models for detection of network attacks in different real network data. We consider an extensive battery of supervised ML models, including both shallow and deep models, taking as input either pre-computed domain-knowledge based input features, or raw, byte-stream inputs. Proposed models are evaluated either using real, in the wild network measurements coming from the WIDE backbone network – the well-known MAWILab dataset, and through publicly available datasets. Results suggest that deep learning models can provide similar results to the best-performing shallow models, but without any sort of expert handcrafted inputs.
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MLSEC -网络安全的浅层和深度机器学习模型的基准测试
网络安全是互联网服务提供商的基石,他们需要应对越来越多的网络攻击,这些攻击将网络的完整性置于危险之中。当前网络监控系统提供的高维网络数据为大规模应用机器学习(ML)方法来改进网络攻击的检测和分类打开了大门。近年来,基于机器学习的系统在网络安全应用中越来越受欢迎,通常考虑浅模型的应用,在训练之前需要一组专家手工制作的特征来预处理数据。深度学习(DL)模型依靠其从输入的原始或基本、未处理的数据中学习特征表示的能力,可以减轻对领域专家知识的需求。尽管如此,目前还不清楚哪一个是管理网络安全的最佳模型或最佳模型类别,总的来说,到目前为止,只有特别的和量身定制的方法被提出和评估。在本文中,我们训练和测试了不同的机器学习模型,用于在不同的真实网络数据中检测网络攻击。我们考虑了广泛的监督ML模型,包括浅模型和深模型,将预先计算的基于领域知识的输入特征或原始字节流输入作为输入。所提出的模型要么使用来自WIDE骨干网(著名的MAWILab数据集)的真实野外网络测量数据,要么通过公开可用的数据集进行评估。结果表明,深度学习模型可以提供与表现最好的浅层模型相似的结果,但没有任何专家手工制作的输入。
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