Handling Minority Class Problem in Threats Detection Based on Heterogeneous Ensemble Learning Approach

H. Eke, Andrei V. Petrovski, Hatem Ahriz
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引用次数: 5

Abstract

Multiclass problems, such as detecting multi-steps behaviour of advanced persistent threats (APTs), have been a major global challenge due to their capability to navigates around defenses and to evade detection for a prolonged period. Targeted APT attacks present an increasing concern for both cyber security and business continuity. Detecting the rare attack is a classification problem with data imbalance. This paper explores the applications of data resampling techniques together with heterogeneous ensemble approach for dealing with data imbalance caused by unevenly distributed data elements among classes with the focus on capturing the rare attack. It has been shown that the suggested algorithms provide not only detection capability but can also classify malicious data traffic corresponding to rare APT attacks.
基于异构集成学习方法处理威胁检测中的少数类问题
多类问题,如检测高级持续威胁(apt)的多步骤行为,由于它们能够绕过防御并长时间逃避检测,一直是全球面临的主要挑战。有针对性的APT攻击给网络安全和业务连续性带来了越来越多的担忧。检测罕见攻击是一个数据不平衡的分类问题。本文探讨了数据重采样技术与异构集成方法在处理类间数据元素分布不均匀导致的数据不平衡中的应用,重点关注捕获罕见攻击。研究表明,所提出的算法不仅提供检测能力,而且可以对罕见的APT攻击对应的恶意数据流量进行分类。
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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