Hybrid Quantum-Classical Autoencoders for Unsupervised Network Intrusion Detection
By: Mohammad Arif Rasyidi , Omar Alhussein , Sami Muhaidat and more
Potential Business Impact:
Helps computers find hidden online dangers.
Unsupervised anomaly-based intrusion detection requires models that can generalize to attack patterns not observed during training. This work presents the first large-scale evaluation of hybrid quantum-classical (HQC) autoencoders for this task. We construct a unified experimental framework that iterates over key quantum design choices, including quantum-layer placement, measurement approach, variational and non-variational formulations, and latent-space regularization. Experiments across three benchmark NIDS datasets show that HQC autoencoders can match or exceed classical performance in their best configurations, although they exhibit higher sensitivity to architectural decisions. Under zero-day evaluation, well-configured HQC models provide stronger and more stable generalization than classical and supervised baselines. Simulated gate-noise experiments reveal early performance degradation, indicating the need for noise-aware HQC designs. These results provide the first data-driven characterization of HQC autoencoder behavior for network intrusion detection and outline key factors that govern their practical viability. All experiment code and configurations are available at https://github.com/arasyi/hqcae-network-intrusion-detection.
Similar Papers
Modeling Quantum Autoencoder Trainable Kernel for IoT Anomaly Detection
Machine Learning (CS)
Quantum computers catch hackers faster than normal ones.
Neural Architecture Search for Quantum Autoencoders
Quantum Physics
Builds better quantum computers for data.
Quantum Autoencoders for Anomaly Detection in Cybersecurity
Emerging Technologies
Finds computer tricks better with less data.