A canonical noise distribution (CND) is an additive mechanism designed to satisfy $f$-differential privacy ($f$-DP), without any wasted privacy budget. $f$-DP is a hypothesis testing-based formulation of privacy phrased in terms of tradeoff functions, which captures the difficulty of a hypothesis test. In this paper, we consider the existence and construction of log-concave CNDs as well as multivariate CNDs. Log-concave distributions are important to ensure that higher outputs of the mechanism correspond to higher input values, whereas multivariate noise distributions are important to ensure that a joint release of multiple outputs has a tight privacy characterization. We show that the existence and construction of CNDs for both types of problems is related to whether the tradeoff function can be decomposed by functional composition (related to group privacy) or mechanism composition. In particular, we show that pure $\epsilon$-DP cannot be decomposed in either way and that there is neither a log-concave CND nor any multivariate CND for $\epsilon$-DP. On the other hand, we show that Gaussian-DP, $(0,\delta)$-DP, and Laplace-DP each have both log-concave and multivariate CNDs.
翻译:在本文中,我们考虑是否存在和构建了对等的CDD以及多变量的CDD。对确保该机制的更高产出与更高的投入值相符十分重要,而多变量的噪音分配对于确保联合发布多种产出具有严格的隐私特征非常重要。我们表明,这两种类型的问题的CNDD的存在和构建与是否由功能构成(与群体隐私有关)或机制构成(特别是,我们表明,纯美的$celon$-DP不能以两种方式解析,而且既没有对等的CND,也没有以美元/美元/美元-DP)为单位的任何多变量的CNDD(CND),我们显示,我们每个GA、每个GA、每个GA、每个Cepsion-Dalon$-DP)。