Litcius/Paper detail

Revolutionizing Encrypted Traffic Classification with MH-Net: A Multi-View Heterogeneous Graph Model

Haozhen Zhang, Haodong Yue, Xi Xiao, Le Yu, Qin Li, Zhen Ling, Ye Zhang

2025Proceedings of the AAAI Conference on Artificial Intelligence16 citationsDOIOpen Access PDF

Abstract

With the growing significance of network security, the classification of encrypted traffic has emerged as an urgent challenge. Traditional byte-based traffic analysis methods are constrained by the rigid granularity of information and fail to fully exploit the diverse correlations between bytes. To address these limitations, this paper introduces MH-Net, a novel approach for classifying network traffic that leverages multi-view heterogeneous traffic graphs to model the intricate relationships between traffic bytes. The essence of MH-Net lies in aggregating varying numbers of traffic bits into multiple types of traffic units, thereby constructing multi-view traffic graphs with diverse information granularities. By accounting for different types of byte correlations, such as header-payload relationships, MH-Net further endows the traffic graph with heterogeneity, significantly enhancing model performance. Notably, we employ contrastive learning in a multi-task manner to strengthen the robustness of the learned traffic unit representations. Experiments conducted on the ISCX and CIC-IoT datasets for both the packet-level and flow-level traffic classification tasks demonstrate that MH-Net achieves the best overall performance compared to dozens of SOTA methods.

Topics & Concepts

EncryptionNet (polyhedron)Computer scienceGraphTraffic classificationComputer securityArtificial intelligenceThe InternetTheoretical computer scienceWorld Wide WebMathematicsGeometryInternet Traffic Analysis and Secure E-votingNetwork Security and Intrusion Detection