ProcSAGE:基于图表示学习的高效主机威胁检测方法

IF 3.9 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Boyuan Xu, Yiru Gong, Xiaoyu Geng, Yun Li, Cong Dong, Song Liu, Yuling Liu, Bo Jiang, Zhigang Lu
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引用次数: 0

摘要

高级持续性威胁(APT)通过多种方法实现内部网络渗透,因此很难仅仅通过边界防御措施来检测攻击线索。为了应对这一挑战,一些研究提出了基于出处图的威胁检测方法,这种方法利用了主机审计日志中的进程、文件和套接字等实体关系。然而,这些方法通常效率不高,尤其是在面对海量审计日志和图算法的计算资源密集型特性时。从海量系统审计日志中有效、经济地提取 APT 攻击线索仍是一项重大挑战。为解决这一问题,本文介绍了 ProcSAGE 方法,该方法基于异常行为模式检测威胁,具有高准确性、低成本和独立于专家知识的特点。在图构建阶段,ProcSAGE 专注于主机审计日志中的进程或线程,以有效控制出处图的规模并降低性能开销。此外,在特征提取阶段,ProcSAGE 会考虑进程或线程本身及其相邻节点的信息,以准确描述它们的特征,提高模型的准确性。为了验证 ProcSAGE 方法的有效性,本研究在 StreamSpot 数据集上进行了全面评估。实验结果表明,ProcSAGE 方法可以显著减少威胁检测过程中的时间和内存消耗,同时提高检测精度,而且随着数据规模的扩大,优化效果会更加显著。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

ProcSAGE: an efficient host threat detection method based on graph representation learning

ProcSAGE: an efficient host threat detection method based on graph representation learning

Advanced Persistent Threats (APTs) achieves internal networks penetration through multiple methods, making it difficult to detect attack clues solely through boundary defense measures. To address this challenge, some research has proposed threat detection methods based on provenance graphs, which leverage entity relationships such as processes, files, and sockets found in host audit logs. However, these methods are generally inefficient, especially when faced with massive audit logs and the computational resource-intensive nature of graph algorithms. Effectively and economically extracting APT attack clues from massive system audit logs remains a significant challenge. To tackle this problem, this paper introduces the ProcSAGE method, which detects threats based on abnormal behavior patterns, offering high accuracy, low cost, and independence from expert knowledge. ProcSAGE focuses on processes or threads in host audit logs during the graph construction phase to effectively control the scale of provenance graphs and reduce performance overhead. Additionally, in the feature extraction phase, ProcSAGE considers information about the processes or threads themselves and their neighboring nodes to accurately characterize them and enhance model accuracy. In order to verify the effectiveness of the ProcSAGE method, this study conducted a comprehensive evaluation on the StreamSpot dataset. The experimental results show that the ProcSAGE method can significantly reduce the time and memory consumption in the threat detection process while improving the accuracy, and the optimization effect becomes more significant as the data size expands.

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来源期刊
Cybersecurity
Cybersecurity Computer Science-Information Systems
CiteScore
7.30
自引率
0.00%
发文量
77
审稿时长
9 weeks
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