LGCROCMLJun 26, 2023

Optimal Differentially Private Model Training with Public Data

arXiv:2306.15056v311 citationsh-index: 32
Originality Incremental advance
AI Analysis

This work addresses a fundamental open question in differential privacy for machine learning, providing theoretical and practical improvements for scenarios where public data is available, though it is incremental in refining existing bounds and algorithms.

The paper tackles the problem of optimally training differentially private models with access to public data, proving tight error bounds for fundamental tasks like mean estimation and empirical risk minimization, and developing novel algorithms that achieve better constants than asymptotically optimal approaches, with empirical benefits over state-of-the-art methods.

Differential privacy (DP) ensures that training a machine learning model does not leak private data. In practice, we may have access to auxiliary public data that is free of privacy concerns. In this work, we assume access to a given amount of public data and settle the following fundamental open questions: 1. What is the optimal (worst-case) error of a DP model trained over a private data set while having access to side public data? 2. How can we harness public data to improve DP model training in practice? We consider these questions in both the local and central models of pure and approximate DP. To answer the first question, we prove tight (up to log factors) lower and upper bounds that characterize the optimal error rates of three fundamental problems: mean estimation, empirical risk minimization, and stochastic convex optimization. We show that the optimal error rates can be attained (up to log factors) by either discarding private data and training a public model, or treating public data like it is private and using an optimal DP algorithm. To address the second question, we develop novel algorithms that are "even more optimal" (i.e. better constants) than the asymptotically optimal approaches described above. For local DP mean estimation, our algorithm is optimal including constants. Empirically, our algorithms show benefits over the state-of-the-art.

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