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Bibliographic Details
Main Authors: Liuliakov, Aleksei, Schulz, Alexander, Hermes, Luca, Hammer, Barbara
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.14192
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Table of Contents:
  • In the domain of network intrusion detection, robustness against contaminated and noisy data inputs remains a critical challenge. This study introduces a probabilistic version of the Temporal Graph Network Support Vector Data Description (TGN-SVDD) model, designed to enhance detection accuracy in the presence of input noise. By predicting parameters of a Gaussian distribution for each network event, our model is able to naturally address noisy adversarials and improve robustness compared to a baseline model. Our experiments on a modified CIC-IDS2017 data set with synthetic noise demonstrate significant improvements in detection performance compared to the baseline TGN-SVDD model, especially as noise levels increase.