An Optimal Differentially Private Learner for Concept Classes with VC Dimension 1

Abstract

We present the first nearly optimal differentially private PAC learner for any concept class with VC dimension 1 and Littlestone dimension d. Our algorithm achieves the sample complexity of O,δ,α,δ(* d), nearly matching the lower bound of (* d) proved by Alon et al. [STOC19]. Prior to our work, the best known upper bound is O(VC· d5) for general VC classes, as shown by Ghazi et al. [STOC21].

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