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Quantum Machine Learning
Quantum Data Breach: Reusing Training Dataset by Untrusted Quantum Clouds
arXiv
Authors: Suryansh Upadhyay, Swaroop Ghosh
Year
2024
Paper ID
65164
Status
Preprint
Abstract Read
~2 min
Abstract Words
214
Citations
N/A
Abstract
Quantum computing (QC) has the potential to revolutionize fields like machine learning, security, and healthcare. Quantum machine learning (QML) has emerged as a promising area, enhancing learning algorithms using quantum computers. However, QML models are lucrative targets due to their high training costs and extensive training times. The scarcity of quantum resources and long wait times further exacerbate the challenge. Additionally, QML providers may rely on a third-party quantum cloud for hosting the model, exposing the models and training data. As QML-as-a-Service (QMLaaS) becomes more prevalent, reliance on third party quantum clouds can pose a significant threat. This paper shows that adversaries in quantum clouds can use white-box access of the QML model during training to extract the state preparation circuit (containing training data) along with the labels. The extracted training data can be reused for training a clone model or sold for profit. We propose a suite of techniques to prune and fix the incorrect labels. Results show that approx90% labels can be extracted correctly. The same model trained on the adversarially extracted data achieves approximately approx90% accuracy, closely matching the accuracy achieved when trained on the original data. To mitigate this threat, we propose masking labels/classes and modifying the cost function for label obfuscation, reducing adversarial label prediction accuracy by approx70%.
Why This Paper Matters
- This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
- It adds a 2024 reference point for readers tracking recent quantum research.
- Quantum computing (QC) has the potential to revolutionize fields like machine learning, security, and healthcare.
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