论文标题
计数查询的私人机制
Differentially Private Mechanisms for Count Queries
论文作者
论文摘要
在本文中,我们考虑了在包含敏感属性的数据集上评估的计数查询(或任何其他整数值查询)的问题。为了保护数据集中个人的隐私,标准做法是为真实的计数增加连续的噪音。我们设计了一种差异私密的机制,该机制添加了整数值噪声,从而使释放的输出保持整数。作为实用程序和隐私之间的权衡,我们在假设真实计数不小于噪声的支撑大小的一半的情况下,从释放错误计数的概率方面得出了隐私参数$ \ eps $和$δ$。然后,我们从数值上证明,与最近在文献中提出的离散高斯机制相比,我们的机制提供了更高的隐私保证。
In this paper, we consider the problem of responding to a count query (or any other integer-valued queries) evaluated on a dataset containing sensitive attributes. To protect the privacy of individuals in the dataset, a standard practice is to add continuous noise to the true count. We design a differentially-private mechanism which adds integer-valued noise allowing the released output to remain integer. As a trade-off between utility and privacy, we derive privacy parameters $\eps$ and $δ$ in terms of the the probability of releasing an erroneous count under the assumption that the true count is no smaller than half the support size of the noise. We then numerically demonstrate that our mechanism provides higher privacy guarantee compared to the discrete Gaussian mechanism that is recently proposed in the literature.