Accurate and Efficient Private Release of Datacubes and Contingency Tables
Graham Cormode, Cecilia M. Procopiuc, Divesh Srivastava, Grigory, Yaroslavtsev

TL;DR
This paper introduces a new method for releasing aggregate data like data cubes and contingency tables privately, improving accuracy and efficiency by optimally allocating noise across different queries.
Contribution
It presents a novel approach to improve accuracy by selectively answering strategy queries more precisely, optimizing noise distribution for various strategies including wavelets and hierarchies.
Findings
Improves accuracy of marginal query releases.
Achieves more efficient noise allocation.
Enhances consistency with original data.
Abstract
A central problem in releasing aggregate information about sensitive data is to do so accurately while providing a privacy guarantee on the output. Recent work focuses on the class of linear queries, which include basic counting queries, data cubes, and contingency tables. The goal is to maximize the utility of their output, while giving a rigorous privacy guarantee. Most results follow a common template: pick a "strategy" set of linear queries to apply to the data, then use the noisy answers to these queries to reconstruct the queries of interest. This entails either picking a strategy set that is hoped to be good for the queries, or performing a costly search over the space of all possible strategies. In this paper, we propose a new approach that balances accuracy and efficiency: we show how to improve the accuracy of a given query set by answering some strategy queries more…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Stochastic Gradient Optimization Techniques
