A Systematic Comparison of Encrypted Machine Learning Solutions for Image Classification
November 10, 2020 ยท Declared Dead ยท ๐ PPMLP@CCS
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Authors
Veneta Haralampieva, Daniel Rueckert, Jonathan Passerat-Palmbach
arXiv ID
2011.05296
Category
cs.CR: Cryptography & Security
Cross-listed
cs.LG
Citations
13
Venue
PPMLP@CCS
Last Checked
3 months ago
Abstract
This work provides a comprehensive review of existing frameworks based on secure computing techniques in the context of private image classification. The in-depth analysis of these approaches is followed by careful examination of their performance costs, in particular runtime and communication overhead. To further illustrate the practical considerations when using different privacy-preserving technologies, experiments were conducted using four state-of-the-art libraries implementing secure computing at the heart of the data science stack: PySyft and CrypTen supporting private inference via Secure Multi-Party Computation, TF-Trusted utilising Trusted Execution Environments and HE- Transformer relying on Homomorphic encryption. Our work aims to evaluate the suitability of these frameworks from a usability, runtime requirements and accuracy point of view. In order to better understand the gap between state-of-the-art protocols and what is currently available in practice for a data scientist, we designed three neural network architecture to obtain secure predictions via each of the four aforementioned frameworks. Two networks were evaluated on the MNIST dataset and one on the Malaria Cell image dataset. We observed satisfying performances for TF-Trusted and CrypTen and noted that all frameworks perfectly preserved the accuracy of the corresponding plaintext model.
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