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arxiv 2312.00023 v1 pith:ABL77MOX submitted 2023-11-09 cs.CR

Hypergraph Topological Features for Autoencoder-Based Intrusion Detection for Cybersecurity Data

classification cs.CR
keywords datadetectionfeaturescapturecybercybersecurityintrusionpipelines
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this position paper, we argue that when hypergraphs are used to capture multi-way local relations of data, their resulting topological features describe global behaviour. Consequently, these features capture complex correlations that can then serve as high fidelity inputs to autoencoder-driven anomaly detection pipelines. We propose two such potential pipelines for cybersecurity data, one that uses an autoencoder directly to determine network intrusions, and one that de-noises input data for a persistent homology system, PHANTOM. We provide heuristic justification for the use of the methods described therein for an intrusion detection pipeline for cyber data. We conclude by showing a small example over synthetic cyber attack data.

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