A Computational Separation between Private Learning and Online Learning
Abstract
A recent line of work has shown a qualitative equivalence between differentially private PAC learning and online learning: A concept class is privately learnable if and only if it is online learnable with a finite mistake bound. However, both directions of this equivalence incur significant losses in both sample and computational efficiency. Studying a special case of this connection, Gonen, Hazan, and Moran (NeurIPS 2019) showed that uniform or highly sample-efficient pure-private learners can be time-efficiently compiled into online learners. We show that, assuming the existence of one-way functions, such an efficient conversion is impossible even for general pure-private learners with polynomial sample complexity. This resolves a question of Neel, Roth, and Wu (FOCS 2019).
Keywords
Cite
@article{arxiv.2007.05665,
title = {A Computational Separation between Private Learning and Online Learning},
author = {Mark Bun},
journal= {arXiv preprint arXiv:2007.05665},
year = {2020}
}
Comments
15 pages