通过特征构建加强高级持续性威胁检测的遗传编程

IF 4.8 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Abdullah Al Mamun , Harith Al-Sahaf , Ian Welch , Seyit Camtepe
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引用次数: 0

摘要

高级持续性威胁(APT)以其不断变化的战术和复杂的规避技术为特点,给网络安全领域带来了相当大的挑战。这些特点往往能战胜传统的安全措施,因此有必要开发更复杂的检测方法。本研究介绍了使用遗传编程的特征进化(FEGP),这是一种利用多树遗传编程(GP)构建和增强 APT 检测特征的新方法。虽然 GP 已被广泛用于解决不同领域的各种问题,但我们的研究重点是将 GP 适应于 APT 检测的多方面情况。所提出的方法通过使用数学运算符组合原始特征来自动构建判别特征。通过利用 GP,系统可以适应 APT 不断变化的策略,从而提高 APT 活动识别的准确性和可靠性。为了评估所提出方法的有效性,我们在广泛使用且可公开访问的 APT 数据集上进行了综合实验。在 DAPT-2020 数据集上结合使用构建特征和原始特征,FEGP 的均衡准确率达到 79.28%,在检测 APT 阶段方面平均超过最佳比较方法 2.12%。此外,在 Unraveled 数据集上仅使用构建的特征,FEGP 的均衡准确率达到 83.14%,比最佳比较方法提高了 3.73%。本文的研究结果强调了基于 GP 的特征构建对 APT 检测的重要性,为提高识别 APT 活动的准确性和效率提供了途径。将所提出的方法与现有的特征构建方法进行比较分析,证明了 FEGP 作为多类 APT 分类的最先进方法的有效性。除性能评估外,还进行了进一步分析,包括特征重要性分析和详细的时间分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic programming for enhanced detection of Advanced Persistent Threats through feature construction
Advanced Persistent Threats (APTs) pose considerable challenges in the realm of cybersecurity, characterized by their evolving tactics and complex evasion techniques. These characteristics often outsmart traditional security measures and necessitate the development of more sophisticated detection methods. This study introduces Feature Evolution using Genetic Programming (FEGP), a novel method that leverages multi-tree Genetic Programming (GP) to construct and enhance features for APT detection. While GP has been widely utilized for tackling various problems in different domains, our study focuses on the adaptation of GP to the multifaceted landscape of APT detection. The proposed method automatically constructs discriminative features by combining the original features using mathematical operators. By leveraging GP, the system adapts to the evolving tactics employed by APTs, enhancing the identification of APT activities with greater accuracy and reliability. To assess the efficacy of the proposed method, comprehensive experiments were conducted on widely used and publicly accessible APT datasets. Using the combination of constructed and original features on the DAPT-2020 dataset, FEGP achieved a balanced accuracy of 79.28%, surpassing the best comparative methods by an average of 2.12% in detecting APT stages. Additionally, utilizing only constructed features on the Unraveled dataset, FEGP achieved a balanced accuracy of 83.14%, demonstrating a 3.73% improvement over the best comparative method. The findings presented in this paper underscore the importance of GP-based feature construction for APT detection, providing a pathway toward improved accuracy and efficiency in identifying APT activities. The comparative analysis of the proposed method against existing feature construction methods demonstrates FEGP’s effectiveness as a state-of-the-art method for multi-class APT classification. In addition to the performance evaluation, further analysis was conducted, encompassing feature importance analysis, and a detailed time analysis.
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来源期刊
Computers & Security
Computers & Security 工程技术-计算机:信息系统
CiteScore
12.40
自引率
7.10%
发文量
365
审稿时长
10.7 months
期刊介绍: Computers & Security is the most respected technical journal in the IT security field. With its high-profile editorial board and informative regular features and columns, the journal is essential reading for IT security professionals around the world. Computers & Security provides you with a unique blend of leading edge research and sound practical management advice. It is aimed at the professional involved with computer security, audit, control and data integrity in all sectors - industry, commerce and academia. Recognized worldwide as THE primary source of reference for applied research and technical expertise it is your first step to fully secure systems.
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