数据发布和分析中的差异隐私

Y. Yang, Zhenjie Zhang, G. Miklau, M. Winslett, Xiaokui Xiao
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引用次数: 98

摘要

近几十年来,数据隐私一直是安全学界、理论界和数据库界的一个重要研究课题。然而,许多现有的研究对攻击者的先验知识有限制性假设,这意味着只有当攻击者对敏感数据的背景信息相当有限,或者只使用某些类型的攻击时,它们才会保护个人隐私。最近,差分隐私已经成为一种新的隐私保护范式,它对对手的先验知识进行了非常保守的假设。自提出以来,差分隐私在计算机科学的许多领域受到了关注,并被认为是保护隐私的数据发布和分析最有前途的范式之一。在本教程中,我们将激励其作为其他范式的替代品,从数据库的角度介绍差分隐私模型的基础知识,描述差分隐私研究的最新进展,解释差分隐私的局限性和缺点,并讨论未来研究的开放性问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differential privacy in data publication and analysis
Data privacy has been an important research topic in the security, theory and database communities in the last few decades. However, many existing studies have restrictive assumptions regarding the adversary's prior knowledge, meaning that they preserve individuals' privacy only when the adversary has rather limited background information about the sensitive data, or only uses certain kinds of attacks. Recently, differential privacy has emerged as a new paradigm for privacy protection with very conservative assumptions about the adversary's prior knowledge. Since its proposal, differential privacy had been gaining attention in many fields of computer science, and is considered among the most promising paradigms for privacy-preserving data publication and analysis. In this tutorial, we will motivate its introduction as a replacement for other paradigms, present the basics of the differential privacy model from a database perspective, describe the state of the art in differential privacy research, explain the limitations and shortcomings of differential privacy, and discuss open problems for future research.
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