Probabilistic counters are well known tools often used for space-efficient set cardinality estimation. In this paper we investigate probabilistic counters from the perspective of preserving privacy. We use standard, rigid differential privacy notion. The intuition is that the probabilistic counters do not reveal too much information about individuals, but provide only general information about the population. Thus they can be used safely without violating privacy of individuals. It turned out however that providing a precise, formal analysis of privacy parameters of probabilistic counters is surprisingly difficult and needs advanced techniques and a very careful approach. We demonstrate also that probabilistic counters can be used as a privacy protecion mechanism without any extra randomization. That is, the inherit randomization from the protocol is sufficient for protecting privacy, even if the probabilistic counter is used many times. In particular we present a specific privacy-preserving data aggregation protocol based on a probabilistic counter. Our results can be used for example in performing distributed surveys.
翻译:概率计数器是众所周知的工具,通常用于空间高效设定基点估计。在本文中,我们从保护隐私的角度来调查概率反差。我们使用标准的僵硬差异隐私概念。直觉是概率反差不会揭示太多关于个人的信息,而只提供有关人口的一般信息。因此,可以在不侵犯个人隐私的情况下安全地使用。然而,事实证明,对概率反差的隐私参数进行准确、正式的分析是极其困难的,需要先进的技术和非常谨慎的方法。我们还表明概率反差器可以作为一种隐私蛋白机制,而不使用任何额外的随机性。这就是,议定书的继承随机化足以保护隐私,即使概率反差的反差多次使用。特别是,我们以概率反差为基础提出具体的隐私保留数据汇总协议。我们的结果可以用来进行分布式的调查。