Computation-Utility-Privacy Tradeoffs in Bayesian Estimation
Sitan Chen, Jingqiu Ding, Mahbod Majid, Walter McKelvie

TL;DR
This paper develops efficient differentially private Bayesian estimation algorithms for Gaussian mean and linear regression, revealing a computational-statistical gap and introducing new sum-of-squares techniques for privacy-preserving inference.
Contribution
It provides the first efficient algorithms achieving near-optimal error for private Bayesian estimation and uncovers a computational gap compared to exponential-time methods.
Findings
Efficient algorithms achieve mean-squared error close to the Bayes-optimal.
A computational-statistical gap exists between efficient and exponential-time algorithms.
New sum-of-squares constraints improve privacy-preserving estimation methods.
Abstract
Bayesian methods lie at the heart of modern data science and provide a powerful scaffolding for estimation in data-constrained settings and principled quantification and propagation of uncertainty. Yet in many real-world use cases where these methods are deployed, there is a natural need to preserve the privacy of the individuals whose data is being scrutinized. While a number of works have attempted to approach the problem of differentially private Bayesian estimation through either reasoning about the inherent privacy of the posterior distribution or privatizing off-the-shelf Bayesian methods, these works generally do not come with rigorous utility guarantees beyond low-dimensional settings. In fact, even for the prototypical tasks of Gaussian mean estimation and linear regression, it was unknown how close one could get to the Bayes-optimal error with a private algorithm, even in the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Machine Learning and Algorithms · Stochastic Gradient Optimization Techniques
