PREM: Privately Answering Statistical Queries with Relative Error
Badih Ghazi, Crist\'obal Guzm\'an, Pritish Kamath, Alexander Knop,, Ravi Kumar, Pasin Manurangsi, Sushant Sachdeva

TL;DR
PREM introduces a differentially private framework that provides multiplicative error guarantees for statistical queries, significantly improving over traditional additive error bounds and supported by matching lower bounds.
Contribution
The paper presents PREM, a novel DP mechanism achieving relative error guarantees for statistical queries, with theoretical analysis and lower bounds.
Findings
Achieves multiplicative error bounds under differential privacy.
Provides nearly matching lower bounds for the problem.
Handles large query and domain sizes efficiently.
Abstract
We introduce (Private Relative Error Multiplicative weight update), a new framework for generating synthetic data that achieves a relative error guarantee for statistical queries under differential privacy (DP). Namely, for a domain , a family of queries , and , our framework yields a mechanism that on input dataset outputs a synthetic dataset such that all statistical queries in on , namely for , are within a multiplicative factor of the corresponding value on up to an additive error that is polynomial in , , , , , and . In contrast, any -DP mechanism is known…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Machine Learning and Algorithms · Stochastic Gradient Optimization Techniques
