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Abstract
Adaptive optimization methods have become the default solvers for many
machine learning tasks. Unfortunately, the benefits of adaptivity may degrade
when training with differential privacy, as the noise added to ensure privacy
reduces the effectiveness of the adaptive preconditioner. To this end, we
propose AdaDPS, a general framework that uses non-sensitive side information to
precondition the gradients, allowing the effective use of adaptive methods in
private settings. We formally show AdaDPS reduces the amount of noise needed to
achieve similar privacy guarantees, thereby improving optimization performance.
Empirically, we leverage simple and readily available side information to
explore the performance of AdaDPS in practice, comparing to strong baselines in
both centralized and federated settings. Our results show that AdaDPS improves
accuracy by 7.7% (absolute) on average -- yielding state-of-the-art
privacy-utility trade-offs on large-scale text and image benchmarks.