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Efficient Empirical Risk Minimization with Smooth Loss Functions in Non-interactive Local Differential Privacy

Abstract

In this paper, we study the Empirical Risk Minimization problem in the non-interactive local model of differential privacy. We first show that if the ERM loss function is (,T)(\infty, T)-smooth, then we can avoid a dependence of the sample complexity, to achieve error α\alpha, on the exponential of the dimensionality pp with base 1/α1/\alpha ({\em i.e.,} αp\alpha^{-p}), which answers a question in \cite{smith2017interaction}. Our approach is based on Bernstein polynomial approximation. Then, we propose player-efficient algorithms with 11-bit communication complexity and O(1)O(1) computation cost for each player. The error bound is asymptotically the same as the original one. Also with additional assumptions we show a server efficient algorithm with polynomial running time. At last, we propose (efficient) non-interactive locally differential private algorithms, based on different types of polynomial approximations, for learning the set of k-way marginal queries and the set of smooth queries.

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