GMA-SAWGAN-GP: A Novel Data Generative Framework to Enhance IDS Detection Performance
Ziyu Mu, Xiyu Shi, Safak Dogan

TL;DR
This paper introduces GMA-SAWGAN-GP, a novel generative framework using advanced GAN techniques to augment data, significantly improving intrusion detection system accuracy and robustness against unknown threats.
Contribution
The paper presents a new generative augmentation framework combining self-attention, Gumbel-Softmax, and adaptive loss balancing to enhance IDS performance and generalization.
Findings
Improves binary classification accuracy by 5.3% on average.
Enhances AUROC and TPR at 5% FPR for unknown attacks by 3.9% and 4.8%.
Demonstrates robustness across multiple datasets and IDS models.
Abstract
Intrusion Detection System (IDS) is often calibrated to known attacks and generalizes poorly to unknown threats. This paper proposes GMA-SAWGAN-GP, a novel generative augmentation framework built on a Self-Attention-enhanced Wasserstein GAN with Gradient Penalty (WGAN-GP). The generator employs Gumbel-Softmax regularization to model discrete fields, while a Multilayer Perceptron (MLP)-based AutoEncoder acts as a manifold regularizer. A lightweight gating network adaptively balances adversarial and reconstruction losses via entropy regularization, improving stability and mitigating mode collapse. The self-attention mechanism enables the generator to capture both short- and long-range dependencies among features within each record while preserving categorical semantics through Gumbel-Softmax heads. Extensive experiments on NSL-KDD, UNSW-NB15, and CICIDS2017 using five representative IDS…
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