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APT-MCL: An Adaptive APT Detection System Based on Multi-View Collaborative Provenance Graph Learning

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Advanced persistent threats (APTs) are stealthy and multi-stage, making single-point defenses (e.g., malware- or traffic-based detectors) ill-suited to capture long-range and cross-entity attack semantics. Provenance-graph analysis has become a prominent approach for APT detection. However, its practical deployment is hampered by (i) the scarcity of APT samples, (ii) the cost and difficulty of fine-grained APT sample labeling, and (iii) the diversity of attack tactics and techniques. Aiming at these problems, this paper proposes APT-MCL, an intelligent APT detection system based on Multi-view Collaborative provenance graph Learning. It adopts an unsupervised learning strategy to discover APT attacks at the node level via anomaly detection. After that, it creates multiple anomaly detection sub-models based on multi-view features and integrates them within a collaborative learning framework to adapt to diverse attack scenarios. Extensive experiments on three real-world APT datasets validate the approach: (i) multi-view features improve cross-scenario generalization, and (ii) co-training substantially boosts node-level detection under label scarcity, enabling practical deployment on diverse attack scenarios.

Mingqi Lv, Shanshan Zhang, Haiwen Liu, Tieming Chen, Tiantian Zhu• 2026

Related benchmarks

TaskDatasetResultRank
Advanced Persistent Threat DetectionRansomware
Precision82.8
4
Advanced Persistent Threat DetectionDataBreach
Precision84.5
4
Advanced Persistent Threat DetectionCADETS
Precision99.9
4
Advanced Persistent Threat DetectionTRACE
Precision99.9
4
Advanced Persistent Threat DetectionTHEIA
Precision86.4
4
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