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Learning versus Refutation in Noninteractive Local Differential Privacy

Machine Learning 2022-10-28 v1 Cryptography and Security Data Structures and Algorithms Machine Learning

Abstract

We study two basic statistical tasks in non-interactive local differential privacy (LDP): learning and refutation. Learning requires finding a concept that best fits an unknown target function (from labelled samples drawn from a distribution), whereas refutation requires distinguishing between data distributions that are well-correlated with some concept in the class, versus distributions where the labels are random. Our main result is a complete characterization of the sample complexity of agnostic PAC learning for non-interactive LDP protocols. We show that the optimal sample complexity for any concept class is captured by the approximate γ2\gamma_2~norm of a natural matrix associated with the class. Combined with previous work [Edmonds, Nikolov and Ullman, 2019] this gives an equivalence between learning and refutation in the agnostic setting.

Keywords

Cite

@article{arxiv.2210.15439,
  title  = {Learning versus Refutation in Noninteractive Local Differential Privacy},
  author = {Alexander Edmonds and Aleksandar Nikolov and Toniann Pitassi},
  journal= {arXiv preprint arXiv:2210.15439},
  year   = {2022}
}
R2 v1 2026-06-28T04:38:42.454Z