Paper 2025/673
Hybrid Fingerprinting for Effective Detection of Cloned Neural Networks
Abstract
As artificial intelligence plays an increasingly important role in decision-making within critical infrastructure, ensuring the authenticity and integrity of neural networks is crucial. This paper addresses the problem of detecting cloned neural networks. We present a method for identifying clones that employs a combination of metrics from both the information and physical domains: output predictions, probability score vectors, and power traces measured from the device running the neural network during inference. We compare the effectiveness of each metric individually, as well as in combination. Our results show that the effectiveness of both the information and the physical domain metrics is excellent for a clone that is a near replica of the target neural network. Furthermore, both the physical domain metric individually and the hybrid approach outperformed the information domain metrics at detecting clones whose weights were extracted with low accuracy. The presented method offers a practical solution for verifying neural network authenticity and integrity. It is particularly useful in scenarios where neural networks are at risk of model extraction attacks, such as in cloud-based machine learning services.
Metadata
- Available format(s)
-
PDF
- Category
- Applications
- Publication info
- Preprint.
- Keywords
- fingerprintingneural networksintellectual propertymodel extractionpower side channels
- Contact author(s)
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aknesil @ kth se
dubrova @ kth se
niklas lindskog @ ericsson com
jakob sternby @ ericsson com
hakan englund @ ericsson com - History
- 2025-04-15: approved
- 2025-04-14: received
- See all versions
- Short URL
- https://ia.cr/2025/673
- License
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CC BY
BibTeX
@misc{cryptoeprint:2025/673, author = {Can Aknesil and Elena Dubrova and Niklas Lindskog and Jakob Sternby and Håkan Englund}, title = {Hybrid Fingerprinting for Effective Detection of Cloned Neural Networks}, howpublished = {Cryptology {ePrint} Archive, Paper 2025/673}, year = {2025}, url = {https://eprint.iacr.org/2025/673} }