关于隐私的统计、信息和估计理论观点综述

Hsiang Hsu, Natalia Martínez, M. Bertrán, Guillermo Sapiro, F. Calmon
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引用次数: 3

摘要

由于用户数据的大量(集中)收集,隐私已成为信息理论和计算机科学中的一个新兴挑战。在本文中,我们从信息论的角度概述了隐私保护机制和度量,并根据概率似然比(及其对数)统一了不同的隐私度量,包括f-散度、rsamunyi散度和差分隐私(DP)。本文回顾了计算机科学中隐私度量和信息论中隐私保护机制设计的最新进展,其中DP是在给定小输入扰动下控制输出位移的标准隐私概念,信息论中通过最小化信息泄漏来保证隐私。特别地,对于DP,我们包括了它的重要变体(例如,rnyi DP, Pufferfish privacy)和属性,讨论了它与信息论量的联系,并提供了其加性噪声机制的操作解释。在信息论隐私方面,我们介绍了一些著名的框架,包括源于率失真理论和信息瓶颈的隐私漏斗,针对统计推断/猜测的隐私保证,以及样本和特征的信息混淆。最后,我们讨论了这些隐私保护机制在当前数据驱动的机器学习场景中的实现,包括深度学习、信息混淆、联邦学习和数据集共享。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey on Statistical, Information, and Estimation—Theoretic Views on Privacy
Privacy has become an emerging challenge in both information theory and computer science due to massive (centralized) collection of user data. In this article, we overview privacy-preserving mechanisms and metrics from the lenses of information theory, and unify different privacy metrics, including f-divergences, Rényi divergences, and differential privacy (DP), in terms of the probability likelihood ratio (and its logarithm). We review recent progress on the design of privacy-preserving mechanisms according to the privacy metrics in computer science, where DP is the standard privacy notion which controls the output shift given small input perturbation, and information theory, where the privacy is guaranteed by minimizing information leakage. In particular, for DP, we include its important variants (e.g., Rényi DP, Pufferfish privacy) and properties, discuss its connections with information-theoretic quantities, and provide the operational interpretations of its additive noise mechanisms. For information-theoretic privacy, we cover notable frameworks, including the privacy funnel, originated from rate-distortion theory and information bottleneck, to privacy guarantee against statistical inference/guessing, and information obfuscation on samples and features. Finally, we discuss the implementations of these privacy-preserving mechanisms in current data-driven machine learning scenarios, including deep learning, information obfuscation, federated learning, and dataset sharing.
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