Quantum Neural Network Extraction Attack via Split Co-Teaching

Abstract

Quantum Neural Networks (QNNs), now offered as QNN-as-a-Service (QNNaaS), have become key targets for model extraction attacks. Existing methods use ensemble learning to train substitute QNNs, but our analysis reveals significant limitations in real-world environments, where noise and cost constraints undermine their effectiveness. In this work, we introduce a novel attack, split co-teaching, which uses label variations to split queried data by noise sensitivity and employs co-teaching schemes to enhance extraction accuracy. The experimental results show that our approach outperforms classical extraction attacks by 6.5\%9.5\% and existing QNN extraction methods by 0.1\%3.7\% across various tasks.

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