Private Regression via Data-Dependent Sufficient Statistic Perturbation
Abstract
Sufficient statistic perturbation (SSP) is a widely used method for differentially private linear regression. SSP adopts a data-independent approach where privacy noise from a simple distribution is added to sufficient statistics. However, sufficient statistics can often be expressed as linear queries and better approximated by data-dependent mechanisms. In this paper we introduce data-dependent SSP for linear regression based on post-processing privately released marginals, and find that it outperforms state-of-the-art data-independent SSP. We extend this result to logistic regression by developing an approximate objective that can be expressed in terms of sufficient statistics, resulting in a novel and highly competitive SSP approach for logistic regression. We also make a connection to synthetic data for machine learning: for models with sufficient statistics, training on synthetic data corresponds to data-dependent SSP, with the overall utility determined by how well the mechanism answers these linear queries.
Keywords
Cite
@article{arxiv.2405.15002,
title = {Private Regression via Data-Dependent Sufficient Statistic Perturbation},
author = {Cecilia Ferrando and Daniel Sheldon},
journal= {arXiv preprint arXiv:2405.15002},
year = {2024}
}