Towards Supercomputing Categorizing the Maliciousness upon Cybersecurity Blacklists with Concept Drift

IF 0.9 Q3 MATHEMATICS, APPLIED
M. V. Carriegos, N. DeCastro-García, D. Escudero
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Abstract

In this article, we have carried out a case study to optimize the classification of the maliciousness of cybersecurity events by IP addresses using machine learning techniques. The optimization is studied focusing on time complexity. Firstly, we have used the extreme gradient boosting model, and secondly, we have parallelized the machine learning algorithm to study the effect of using a different number of cores for the problem. We have classified the cybersecurity events’ maliciousness in a biclass and a multiclass scenario. All the experiments have been carried out with a well-known optimal set of features: the geolocation information of the IP address. However, the geolocation features of an IP address can change over time. Also, the relation between the IP address and its label of maliciousness can be modified if we test the address several times. Then, the models’ performance could degrade because the information acquired from training on past samples may not generalize well to new samples. This situation is known as concept drift. For this reason, it is necessary to study if the optimization proposed works in a concept drift scenario. The results show that the concept drift does not degrade the models. Also, boosting algorithms achieving competitive or better performance compared to similar research works for the biclass scenario and an effective categorization for the multiclass case. The best efficient setting is reached using five nodes regarding high-performance computation resources.

Abstract Image

基于概念漂移的网络安全黑名单恶意分类研究
在本文中,我们进行了一个案例研究,利用机器学习技术优化IP地址对网络安全事件的恶意分类。重点研究了时间复杂度的优化问题。首先,我们使用了极端梯度增强模型,其次,我们将机器学习算法并行化,研究使用不同核数对问题的影响。我们将网络安全事件的恶意分类为一类和多类场景。所有的实验都是用一组众所周知的最优特征进行的:IP地址的地理位置信息。然而,IP地址的地理位置特征会随着时间的推移而改变。另外,通过对IP地址进行多次测试,可以修改IP地址与其恶意标签之间的关系。然后,模型的性能可能会下降,因为从过去样本的训练中获得的信息可能不能很好地推广到新的样本。这种情况被称为概念漂移。因此,有必要研究所提出的优化是否在概念漂移情况下有效。结果表明,概念漂移不会降低模型的质量。此外,与类似的双类场景研究工作相比,增强算法实现了具有竞争力或更好的性能,并对多类情况进行了有效的分类。在高性能计算资源方面,使用5个节点可以达到最佳效率设置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.20
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