使用数据来源和度量学习的高级持续威胁检测

IF 7 2区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE IEEE Transactions on Dependable and Secure Computing Pub Date : 2023-09-01 DOI:10.1109/TDSC.2022.3221789
Khandakar Ashrafi Akbar, Yigong Wang, G. Ayoade, Y. Gao, A. Singhal, L. Khan, B. Thuraisingham, Kangkook Jee
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引用次数: 2

摘要

近年来,由于民族国家和复杂的公司对获取重要信息的兴趣增加,高级持续性威胁(APT)有所增加。通常,APT攻击更难以检测,因为它们利用零日攻击和常见的良性工具。此外,这些攻击活动通常会延长时间以逃避检测。我们利用一种方法,使用来源图来获取主机节点的执行痕迹,以检测异常行为。通过使用来源图,我们提取特征,然后用于训练在线自适应度量学习。在线度量学习是一种深度学习方法,它学习一个函数来最小化相似类之间的分离,最大化不相似实例之间的分离。我们将我们的方法与基线模型进行了比较,结果表明我们的方法优于基线模型,平均提高了11.3%的检测准确率,平均提高了18.3%的真阳性率(TPR)。我们还表明,在二进制和多类设置的综合攻击数据集中,我们的方法优于几种最先进的模型性能。
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Advanced Persistent Threat Detection Using Data Provenance and Metric Learning
Advanced persistent threats (APT) have increased in recent times as a result of the rise in interest by nation-states and sophisticated corporations to obtain high-profile information. Typically, APT attacks are more challenging to detect since they leverage zero-day attacks and common benign tools. Furthermore, these attack campaigns are often prolonged to evade detection. We leverage an approach that uses a provenance graph to obtain execution traces of host nodes in order to detect anomalous behavior. By using the provenance graph, we extract features that are then used to train an online adaptive metric learning. Online metric learning is a deep learning method that learns a function to minimize the separation between similar classes and maximizes the separation between dis- similar instances. We compare our approach with baseline models and we show our method outperforms the baseline models by increasing detection accuracy on average by 11.3% and increases True positive rate (TPR) on average by 18.3%. We also show that our method outperforms several state-of-the-art models performances in comprehensive attack datasets in both binary and multi-class settings.
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来源期刊
IEEE Transactions on Dependable and Secure Computing
IEEE Transactions on Dependable and Secure Computing 工程技术-计算机:软件工程
CiteScore
11.20
自引率
5.50%
发文量
354
审稿时长
9 months
期刊介绍: The "IEEE Transactions on Dependable and Secure Computing (TDSC)" is a prestigious journal that publishes high-quality, peer-reviewed research in the field of computer science, specifically targeting the development of dependable and secure computing systems and networks. This journal is dedicated to exploring the fundamental principles, methodologies, and mechanisms that enable the design, modeling, and evaluation of systems that meet the required levels of reliability, security, and performance. The scope of TDSC includes research on measurement, modeling, and simulation techniques that contribute to the understanding and improvement of system performance under various constraints. It also covers the foundations necessary for the joint evaluation, verification, and design of systems that balance performance, security, and dependability. By publishing archival research results, TDSC aims to provide a valuable resource for researchers, engineers, and practitioners working in the areas of cybersecurity, fault tolerance, and system reliability. The journal's focus on cutting-edge research ensures that it remains at the forefront of advancements in the field, promoting the development of technologies that are critical for the functioning of modern, complex systems.
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