PDCleaner: A multi-view collaborative data compression method for provenance graph-based APT detection systems

IF 4.8 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Jiaobo Jin, Tiantian Zhu, Qixuan Yuan, Tieming Chen, Mingqi Lv, Chenbin Zheng, Jian-Ping Mei, Xiang Pan
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引用次数: 0

Abstract

In recent years, advanced persistent threats (APTs) have frequently occurred with increasing severity on a global scale. Provenance graph-based APT detection systems have demonstrated significant effectiveness. However, current data compression methods face challenges in processing massive data volumes, including compression imbalance, limited generality, and semantic loss. To address these challenges, we propose PDCleaner, a multi-perspective collaborative data compression method designed to preserve the semantics of provenance graphs. This method comprises three core strategies: a global semantics-driven event deletion strategy, a behavior-preserving entity aggregation strategy, and a similarity-based event chain merging strategy. These strategies collaboratively compress data across three perspectives: events, entities, and event chains, resulting in concise and generalizable datasets suitable for model training and prediction. Experimental results indicate that the multi-perspective collaborative compression method achieves a compression rate of 14.43X while maintaining an average semantic loss of only 4.98%, significantly reducing data size and preserving provenance graph semantics. Furthermore, in a deep learning-based threat detection model, this method reduces training time by up to 20.22% and improves the F1 score by 0.051, offering an optimal data foundation for efficient and accurate threat detection.
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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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