ICML2023

Near-Optimal Algorithms for Private Online Optimization in the Realizable Regime

Hilal Asi, Vitaly Feldman, Tomer Koren, Kunal Talwar

12 citations

Abstract

We consider online learning problems in the realizable setting, where there is a zero-loss solution, and propose new Differentially Private (DP) algorithms that obtain near-optimal regret bounds. For the problem of online prediction from experts, we design new algorithms that obtain near-optimal regret O(ε1log1.5d){O} \big( \varepsilon^{-1} \log^{1.5}{d} \big) where dd is the number of experts. This significantly improves over the best existing regret bounds for the DP non-realizable setting which are O(ε1min{d,T1/3logd}){O} \big( \varepsilon^{-1} \min\big\{d, T^{1/3}\log d\big\} \big). We also develop an adaptive algorithm for the small-loss setting with regret O(Llogd+ε1log1.5d)O(L^\star\log d + \varepsilon^{-1} \log^{1.5}{d}) where LL^\star is the total loss of the best expert. Additionally, we consider DP online convex optimization in the realizable setting and propose an algorithm with near-optimal regret O(ε1d1.5)O \big(\varepsilon^{-1} d^{1.5} \big), as well as an algorithm for the smooth case with regret O(ε2/3(dT)1/3)O \big( \varepsilon^{-2/3} (dT)^{1/3} \big), both significantly improving over existing bounds in the non-realizable regime.