NeurIPS2020

Private Learning of Halfspaces: Simplifying the Construction and Reducing the Sample Complexity

Haim Kaplan, Yishay Mansour, Uri Stemmer, Eliad Tsfadia

18 citations

Abstract

We present a differentially private learner for halfspaces over a finite grid GG in Rd\mathbb{R}^d with sample complexity d2.52logG\approx d^{2.5}\cdot 2^{\log^*|G|}, which improves the state-of-the-art result of [Beimel et al., COLT 2019] by a d2d^2 factor. The building block for our learner is a new differentially private algorithm for approximately solving the linear feasibility problem: Given a feasible collection of mm linear constraints of the form AxbAx\geq b, the task is to privately identify a solution xx that satisfies most of the constraints. Our algorithm is iterative, where each iteration determines the next coordinate of the constructed solution xx.