Distance makes the types grow stronger: a calculus for differential privacy

J. Reed, B. Pierce
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引用次数: 248

Abstract

We want assurances that sensitive information will not be disclosed when aggregate data derived from a database is published. Differential privacy offers a strong statistical guarantee that the effect of the presence of any individual in a database will be negligible, even when an adversary has auxiliary knowledge. Much of the prior work in this area consists of proving algorithms to be differentially private one at a time; we propose to streamline this process with a functional language whose type system automatically guarantees differential privacy, allowing the programmer to write complex privacy-safe query programs in a flexible and compositional way. The key novelty is the way our type system captures function sensitivity, a measure of how much a function can magnify the distance between similar inputs: well-typed programs not only can't go wrong, they can't go too far on nearby inputs. Moreover, by introducing a monad for random computations, we can show that the established definition of differential privacy falls out naturally as a special case of this soundness principle. We develop examples including known differentially private algorithms, privacy-aware variants of standard functional programming idioms, and compositionality principles for differential privacy.
距离使这类人变得更强:这是一种差分隐私的微积分
我们希望在发布来自数据库的汇总数据时保证敏感信息不会泄露。差异隐私提供了一个强有力的统计保证,即数据库中任何个人的存在的影响都可以忽略不计,即使对手有辅助知识。该领域的许多先前工作包括每次证明一个算法是差分私有的;我们建议用一种函数式语言来简化这个过程,这种语言的类型系统自动保证差异隐私,允许程序员以灵活和组合的方式编写复杂的隐私安全查询程序。关键的新奇之处在于我们的类型系统捕捉函数灵敏度的方式,函数灵敏度是一种度量函数可以在多大程度上放大相似输入之间的距离的方法:类型良好的程序不仅不会出错,而且不会在附近的输入上走得太远。此外,通过引入随机计算的单子,我们可以证明差分隐私的既定定义自然地成为该稳健性原则的特殊情况。我们开发的示例包括已知的差分私有算法、标准函数式编程习惯的隐私感知变体以及差分隐私的组合性原则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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