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Differentially Private Learning with Margin Guarantees

Machine Learning 2022-04-25 v1 Machine Learning

Abstract

We present a series of new differentially private (DP) algorithms with dimension-independent margin guarantees. For the family of linear hypotheses, we give a pure DP learning algorithm that benefits from relative deviation margin guarantees, as well as an efficient DP learning algorithm with margin guarantees. We also present a new efficient DP learning algorithm with margin guarantees for kernel-based hypotheses with shift-invariant kernels, such as Gaussian kernels, and point out how our results can be extended to other kernels using oblivious sketching techniques. We further give a pure DP learning algorithm for a family of feed-forward neural networks for which we prove margin guarantees that are independent of the input dimension. Additionally, we describe a general label DP learning algorithm, which benefits from relative deviation margin bounds and is applicable to a broad family of hypothesis sets, including that of neural networks. Finally, we show how our DP learning algorithms can be augmented in a general way to include model selection, to select the best confidence margin parameter.

Keywords

Cite

@article{arxiv.2204.10376,
  title  = {Differentially Private Learning with Margin Guarantees},
  author = {Raef Bassily and Mehryar Mohri and Ananda Theertha Suresh},
  journal= {arXiv preprint arXiv:2204.10376},
  year   = {2022}
}
R2 v1 2026-06-24T10:55:15.418Z