Mitigating Advanced Persistent Threats Using A Combined Static-Rule And Machine Learning-Based Technique

Oluwasegun Adelaiye, A. Ajibola
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引用次数: 1

Abstract

Advanced Persistent Threat is a targeted attack method used to maintain undetected unauthorized access over an extended period to exfiltrate valuable data. The inability of traditional methods in mitigating this attack is a major problem, which poses huge threats to organizations. This paper proposes the combined use of pattern recognition and machine learning based techniques in militating the attack. Using basic statistical test approach, a dataset containing 1,047,908 PCAP instances is analyzed and results show patterns exist in identifying between malicious data traffic and normal data traffic. The machine learning on the other hand, is evaluated using three algorithms successfully: KNN, Decision Tree and Random Forest. All algorithms showed very high accuracies in correctly classifying the data traffic. Using the algorithm with the highest accuracy, Random Forest is optimized for better effectiveness.
使用组合静态规则和基于机器学习的技术减轻高级持续性威胁
高级持续威胁是一种有针对性的攻击方法,用于在很长一段时间内保持未被发现的未经授权的访问,以泄露有价值的数据。传统方法无法减轻这种攻击是一个主要问题,这给组织带来了巨大的威胁。本文提出结合使用模式识别和基于机器学习的技术来防御攻击。使用基本的统计测试方法,对包含1,047,908个PCAP实例的数据集进行了分析,结果显示在识别恶意数据流量和正常数据流量之间存在模式。另一方面,机器学习成功地使用三种算法进行评估:KNN,决策树和随机森林。所有算法在正确分类数据流量方面都显示出很高的准确率。使用具有最高精度的算法,随机森林得到了更好的优化效果。
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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