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Utilising Flow Aggregation to Classify Benign Imitating Attacks

机译:利用流量聚合来对良性模仿攻击进行分类

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摘要

Cyber-attacks continue to grow, both in terms of volume and sophistication. This is aided by an increase in available computational power, expanding attack surfaces, and advancements in the human understanding of how to make attacks undetectable. Unsurprisingly, machine learning is utilised to defend against these attacks. In many applications, the choice of features is more important than the choice of model. A range of studies have, with varying degrees of success, attempted to discriminate between benign traffic and well-known cyber-attacks. The features used in these studies are broadly similar and have demonstrated their effectiveness in situations where cyber-attacks do not imitate benign behaviour. To overcome this barrier, in this manuscript, we introduce new features based on a higher level of abstraction of network traffic. Specifically, we perform flow aggregation by grouping flows with similarities. This additional level of feature abstraction benefits from cumulative information, thus qualifying the models to classify cyber-attacks that mimic benign traffic. The performance of the new features is evaluated using the benchmark CICIDS2017 dataset, and the results demonstrate their validity and effectiveness. This novel proposal will improve the detection accuracy of cyber-attacks and also build towards a new direction of feature extraction for complex ones.
机译:在体积和复杂性方面,网络攻击继续增长。这是通过可用的计算能力,扩展攻击表面的增加,以及人类理解如何使攻击无法察觉的攻击。不出所料,利用机器学习来防御这些攻击。在许多应用中,功能的选择比模型的选择更重要。一系列研究具有不同程度的成功,试图歧视良性的交通和众所周知的网络攻击。这些研究中使用的特征是广泛的,并且在网络攻击不会模仿良性行为的情况下证明了它们的有效性。为了克服这个障碍,在这个手稿中,我们基于更高的网络流量抽象介绍了新功能。具体地,我们通过使用相似性分组流来执行流量聚合。这种额外的特征抽象级别来自累积信息,因此限定了模型来分类模拟良性流量的网络攻击。使用基准Cicids2017数据集进行评估新功能的性能,结果证明了它们的有效性和有效性。这种新颖的提案将提高网络攻击的检测精度,并且还朝向复杂的网络提取的新方向。

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