Differentially Private Query Learning: from Data Publishing to Model Publishing
Tianqing Zhu, Ping Xiong, Gang Li, Wanlei Zhou, Philip S. Yu

TL;DR
This paper introduces a machine learning approach to differential privacy data publishing, replacing traditional query release methods with a predictive model that improves accuracy and utility while maintaining privacy guarantees.
Contribution
It proposes transforming data publishing into a learning problem, enabling non-interactive query answering with enhanced accuracy under differential privacy constraints.
Findings
Outperforms traditional methods in Mean Absolute Value metrics.
Predictive model retains utility of published data.
Effective for large sets of queries and fresh query prediction.
Abstract
With the development of Big Data and cloud data sharing, privacy preserving data publishing becomes one of the most important topics in the past decade. As one of the most influential privacy definitions, differential privacy provides a rigorous and provable privacy guarantee for data publishing. Differentially private interactive publishing achieves good performance in many applications; however, the curator has to release a large number of queries in a batch or a synthetic dataset in the Big Data era. To provide accurate non-interactive publishing results in the constraint of differential privacy, two challenges need to be tackled: one is how to decrease the correlation between large sets of queries, while the other is how to predict on fresh queries. Neither is easy to solve by the traditional differential privacy mechanism. This paper transfers the data publishing problem to a…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Mobile Crowdsensing and Crowdsourcing
