Taking advantage of unsupervised learning in incident response

C. Nilă, V. Patriciu
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引用次数: 3

Abstract

This paper looks at new ways to improve the necessary time for incident response triage operations. By employing unsupervised K-means, enhanced by both manual and automated feature extraction techniques, the incident response team can quickly and decisively extrapolate malicious web requests that concluded to the investigated exploitation. More precisely, we evaluated the benefits of different visualization enhancing methods that can improve feature selection and other dimensionality reduction techniques. Furthermore, early tests of the gross framework have shown that the necessary time for triage is diminished, more so if a hybrid multi-model is employed. Our case study revolved around the need for unsupervised classification of unknown web access logs. However, the demonstrated principals may be considered for other applications of machine learning in the cybersecurity domain.
在事件响应中利用无监督学习
本文着眼于改进事件响应分类操作所需时间的新方法。通过采用无监督的K-means,通过手动和自动特征提取技术进行增强,事件响应团队可以快速、果断地推断出被调查利用的恶意web请求。更准确地说,我们评估了不同的可视化增强方法的好处,这些方法可以改善特征选择和其他降维技术。此外,对总体框架的早期测试表明,分诊所需的时间减少了,如果采用混合多模型,则更多。我们的案例研究围绕着对未知web访问日志进行无监督分类的需求。然而,所展示的原理可以被考虑用于网络安全领域的机器学习的其他应用。
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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