Modeling Quantum Federated Autoencoder for Anomaly Detection in IoT Networks
arXiv cs.AI / 2026/3/25
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要点
- The paper proposes a “Quantum Federated Autoencoder” framework that combines quantum autoencoders with quantum federated learning to perform anomaly detection across IoT networks.
- It aims to improve efficiency, security, and privacy by training locally on edge devices while avoiding raw-data transmission and reducing communication overhead through decentralized learning.
- The method uses quantum autoencoders to build high-dimensional feature representations, targeting higher sensitivity for anomalies in complex, dynamic IoT traffic.
- Experiments on a real-world IoT dataset indicate anomaly detection accuracy and robustness comparable to centralized approaches, while maintaining privacy guarantees.

