Hybrid Quantum-Classical GANs for the Generation of Adversarial Network Flows
Prateek Paudel, Nitin Jha, Abhishek Parakh, Mahadevan Subramaniam

TL;DR
This paper introduces a hybrid quantum-classical GAN framework for generating adversarial network traffic, leveraging quantum states for more expressive latent representations and testing IDS robustness.
Contribution
It presents a novel QC-GAN model that encodes latent features as quantum states, aiming to improve generative expressiveness and reduce computational costs.
Findings
Quantum-encoded latent vectors enhance generative diversity.
Generated traffic can bypass classical IDS models.
Hardware noise impacts attack effectiveness.
Abstract
Classical generative adversarial networks (GANs) have been applied to generate adversarial network traffic capable of attacking intrusion detection systems, but they suffer from shortcomings such as the need for large amounts of high-dimensional datasets, mode collapse, and high computational overhead. In this work, we propose a hybrid quantum-classical GAN (QC-GAN) framework where a variational quantum generator is used to generate synthetic network traffic flows mimicking malicious traffic using latent representations. Instead of sampling classical noise vectors, we encode the latent vector (the hidden features) as a quantum state, which is the basis for claiming more expressive latent representations and reducing computational overhead. A classical discriminator will be trained on real-world datasets (UNSW-NB15) and the proposed QC-GAN-generated fake network flows. In this…
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