Efficient Network Representation for GNN-based Intrusion Detection
September 11, 2023 Β· Declared Dead Β· π International Conference on Applied Cryptography and Network Security
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Authors
Hamdi Friji, Alexis Olivereau, Mireille Sarkiss
arXiv ID
2310.05956
Category
cs.CR: Cryptography & Security
Cross-listed
cs.AI
Citations
13
Venue
International Conference on Applied Cryptography and Network Security
Last Checked
4 months ago
Abstract
The last decades have seen a growth in the number of cyber-attacks with severe economic and privacy damages, which reveals the need for network intrusion detection approaches to assist in preventing cyber-attacks and reducing their risks. In this work, we propose a novel network representation as a graph of flows that aims to provide relevant topological information for the intrusion detection task, such as malicious behavior patterns, the relation between phases of multi-step attacks, and the relation between spoofed and pre-spoofed attackers activities. In addition, we present a Graph Neural Network (GNN) based framework responsible for exploiting the proposed graph structure to classify communication flows by assigning them a maliciousness score. The framework comprises three main steps that aim to embed nodes features and learn relevant attack patterns from the network representation. Finally, we highlight a potential data leakage issue with classical evaluation procedures and suggest a solution to ensure a reliable validation of intrusion detection systems performance. We implement the proposed framework and prove that exploiting the flow-based graph structure outperforms the classical machine learning-based and the previous GNN-based solutions.
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