DPCube:为健康信息发布不同的私有数据集

Yonghui Xiao, James J. Gardner, Li Xiong
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引用次数: 50

摘要

我们将演示DPCube,它是健康信息去识别(HIDE)框架中的一个组件,用于为敏感数据发布不同的私有数据立方体(或多维直方图)。HIDE是我们开发的一个框架,用于集成异构结构化和非结构化健康信息,并提供保护隐私的数据发布方法。DPCube组件使用差异私有访问机制和创新的两阶段多维分区策略来发布多维数据立方体或直方图,从而在满足差异隐私的同时获得良好的实用性。我们演示了发布的数据集可以作为原始数据库的净化摘要,并与基于数据集的可选合成数据集一起,可以支持各种在线分析处理(OLAP)查询和学习任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DPCube: Releasing Differentially Private Data Cubes for Health Information
We demonstrate DPCube, a component in our Health Information DE-identification (HIDE) framework, for releasing differentially private data cubes (or multi-dimensional histograms) for sensitive data. HIDE is a framework we developed for integrating heterogenous structured and unstructured health information and provides methods for privacy preserving data publishing. The DPCube component uses differentially private access mechanisms and an innovative 2-phase multidimensional partitioning strategy to publish a multi-dimensional data cube or histogram that achieves good utility while satisfying differential privacy. We demonstrate that the released data cubes can serve as a sanitized synopsis of the raw database and, together with an optional synthesized dataset based on the data cubes, can support various Online Analytical Processing (OLAP) queries and learning tasks.
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