Bayes Security: A Not So Average Metric

K. Chatzikokolakis, Giovanni Cherubin, C. Palamidessi, C. Troncoso
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引用次数: 8

Abstract

Security system designers favor worst-case security metrics, such as those derived from differential privacy (DP), due to the strong guarantees they provide. On the downside, these guarantees result in a high penalty on the system's performance. In this paper, we study Bayes security, a security metric inspired by the cryptographic advantage. Similarly to DP, Bayes security i) is independent of an adversary's prior knowledge, ii) it captures the worst-case scenario for the two most vulnerable secrets (e.g., data records); and iii) it is easy to compose, facilitating security analyses. Additionally, Bayes security iv) can be consistently estimated in a black-box manner, contrary to DP, which is useful when a formal analysis is not feasible; and v) provides a better utility-security trade-off in high-security regimes because it quantifies the risk for a specific threat model as opposed to threat-agnostic metrics such as DP. We formulate a theory around Bayes security, and we provide a thorough comparison with respect to well-known metrics, identifying the scenarios where Bayes Security is advantageous for designers.
贝叶斯安全:一个不太平均的度量
安全系统设计人员倾向于最坏情况下的安全度量,例如来自差分隐私(DP)的度量,因为它们提供了强有力的保证。缺点是,这些保证会对系统的性能造成很大的损失。本文研究了受密码学优势启发的安全度量贝叶斯安全性。与DP类似,贝叶斯安全i)独立于对手的先验知识,ii)它捕获了两个最易受攻击的秘密(例如,数据记录)的最坏情况;iii)易于组合,便于安全性分析。此外,与DP相反,贝叶斯安全性iv)可以以黑盒方式一致地估计,这在形式化分析不可行的情况下是有用的;v)在高安全制度中提供了更好的效用-安全权衡,因为它量化了特定威胁模型的风险,而不是像DP这样的威胁不可知论指标。我们围绕贝叶斯安全性制定了一个理论,并就众所周知的指标提供了一个彻底的比较,确定了贝叶斯安全性对设计人员有利的场景。
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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