APT Attack Detection Based on Graph Convolutional Neural Networks

被引:0
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作者
Weiwu Ren
Xintong Song
Yu Hong
Ying Lei
Jinyu Yao
Yazhou Du
Wenjuan Li
机构
[1] Changchun University of Science and Technology,School of Computer Science and Technology
[2] National Computer Network Emergency Response Center,Jilin Branch
关键词
APT attack detection; Graph convolutional neural networks; Knowledge graph; Vulnerability exploits;
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中图分类号
学科分类号
摘要
Advanced persistent threat (APT) attacks are malicious and targeted forms of cyberattacks that pose significant challenges to the information security of governments and enterprises. Traditional detection methods struggle to extract long-term relationships within these attacks effectively. This paper proposes an APT attack detection model based on graph convolutional neural networks (GCNs) to address this issue. The aim is to detect known attacks based on vulnerabilities and attack contexts. We extract organization-vulnerability relationships from publicly available APT threat intelligence, along with the names and relationships of software security entities from CVE, CWE, and CAPEC, to generate triple data and construct a knowledge graph of APT attack behaviors. This knowledge graph is transformed into a homogeneous graph, and GCNs are employed to process graph features, enabling effective APT attack detection. We evaluate the proposed method on the dataset constructed in this paper. The results show that the detection accuracy of the GCN method reaches 95.9%, improving by approximately 2.1% compared to the GraphSage method. This approach proves to be effective in real-world APT attack detection scenarios.
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