PREM: Privately Answering Statistical Queries with Relative Error

Abstract

We introduce PREM (Private Relative Error Multiplicative weight update), a new framework for generating synthetic data that achieves a relative error guarantee for statistical queries under (, δ) differential privacy (DP). Namely, for a domain X, a family F of queries f : X \0, 1\, and ζ > 0, our framework yields a mechanism that on input dataset D ∈ Xn outputs a synthetic dataset D ∈ Xn such that all statistical queries in F on D, namely Σx ∈ D f(x) for f ∈ F, are within a 1 ζ multiplicative factor of the corresponding value on D up to an additive error that is polynomial in | F|, | X|, n, (1/δ), 1/, and 1/ζ. In contrast, any (, δ)-DP mechanism is known to require worst-case additive error that is polynomial in at least one of n, | F|, or | X|. We complement our algorithm with nearly matching lower bounds.

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