A Programming Framework for Differential Privacy with Accuracy Concentration Bounds

Elisabet Lobo Vesga, Alejandro Russo, Marco Gaboardi
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引用次数: 22

Abstract

Differential privacy offers a formal framework for reasoning about privacy and accuracy of computations on private data. It also offers a rich set of building blocks for constructing private data analyses. When carefully calibrated, these analyses simultaneously guarantee the privacy of the individuals contributing their data, and the accuracy of the data analyses results, inferring useful properties about the population. The compositional nature of differential privacy has motivated the design and implementation of several programming languages aimed at helping a data analyst in programming differentially private analyses. However, most of the programming languages for differential privacy proposed so far provide support for reasoning about privacy but not for reasoning about the accuracy of data analyses. To overcome this limitation, in this work we present DPella, a programming framework providing data analysts with support for reasoning about privacy, accuracy and their trade-offs. The distinguishing feature of DPella is a novel component which statically tracks the accuracy of different data analyses. In order to make tighter accuracy estimations, this component leverages taint analysis for automatically inferring statistical independence of the different noise quantities added for guaranteeing privacy. We evaluate our approach by implementing several classical queries from the literature and showing how data analysts can figure out the best manner to calibrate privacy to meet the accuracy requirements.
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一种具有准确度集中界限的差分隐私规划框架
差分隐私为私有数据计算的隐私性和准确性提供了一个形式化的推理框架。它还为构建私有数据分析提供了一组丰富的构建块。经过仔细校准,这些分析同时保证了提供数据的个人的隐私,以及数据分析结果的准确性,从而推断出有关人口的有用属性。差分隐私的组合特性激发了一些编程语言的设计和实现,旨在帮助数据分析人员编写差分隐私分析。然而,目前提出的大多数差分隐私编程语言都支持对隐私的推理,而不支持对数据分析的准确性的推理。为了克服这一限制,在这项工作中,我们提出了della,这是一个编程框架,为数据分析师提供关于隐私、准确性及其权衡的推理支持。della的显著特点是一个新颖的组件,它静态地跟踪不同数据分析的准确性。为了进行更严格的精度估计,该组件利用污染分析来自动推断添加的不同噪声量的统计独立性,以保证隐私。我们通过实现文献中的几个经典查询来评估我们的方法,并展示数据分析师如何找出校准隐私以满足准确性要求的最佳方式。
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