Choosing Public Datasets for Private Machine Learning via Gradient Subspace Distance

March 02, 2023 ยท Declared Dead ยท ๐Ÿ› 2025 IEEE Conference on Secure and Trustworthy Machine Learning (SaTML)

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Authors Xin Gu, Gautam Kamath, Zhiwei Steven Wu arXiv ID 2303.01256 Category stat.ML: Machine Learning (Stat) Cross-listed cs.CR, cs.CV, cs.DS, cs.LG Citations 19 Venue 2025 IEEE Conference on Secure and Trustworthy Machine Learning (SaTML) Last Checked 4 months ago
Abstract
Differentially private stochastic gradient descent privatizes model training by injecting noise into each iteration, where the noise magnitude increases with the number of model parameters. Recent works suggest that we can reduce the noise by leveraging public data for private machine learning, by projecting gradients onto a subspace prescribed by the public data. However, given a choice of public datasets, it is not a priori clear which one may be most appropriate for the private task. We give an algorithm for selecting a public dataset by measuring a low-dimensional subspace distance between gradients of the public and private examples. We provide theoretical analysis demonstrating that the excess risk scales with this subspace distance. This distance is easy to compute and robust to modifications in the setting. Empirical evaluation shows that trained model accuracy is monotone in this distance.
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