论文标题
差异私人离散噪声添加机制:条件,属性和优化
Differential Private Discrete Noise Adding Mechanism: Conditions, Properties and Optimization
论文作者
论文摘要
差异隐私是量化数据匿名过程中隐私损失的标准框架。为了保护差异隐私,广泛采用了随机噪声添加机制,在数据隐私级别和数据实用程序之间的权衡引起了极大的关注。对连续噪声添加机制的隐私和实用性属性进行了充分的研究。但是,相关工作不足以对离散分布数据的离散随机机制,例如流量数据,健康记录。本文着重于离散的随机噪声添加机制。我们研究了一般离散随机机制的基本差异隐私条件和属性,以及数据隐私和数据实用程序之间的权衡。具体而言,我们得出了一个足够且必要的条件,用于离散的epsilon-Differential隐私,并提供离散的足够条件(Epsilon,delta) - 差异隐私,并具有差异隐私参数的数值估计。这些条件可以应用于分析带有各种噪声的离散噪声添加机制的差异隐私属性。然后,有了差异隐私的保证,我们提出了一个最佳的离散epsilon差异性私人噪声添加机制,在实用程序最大化框架下,该效用的特征是机制的输入和输出之间的统计属性相似。对于此设置,我们发现最佳机制中离散噪声概率分布的类别是楼梯形的。
Differential privacy is a standard framework to quantify the privacy loss in the data anonymization process. To preserve differential privacy, a random noise adding mechanism is widely adopted, where the trade-off between data privacy level and data utility is of great concern. The privacy and utility properties for the continuous noise adding mechanism have been well studied. However, the related works are insufficient for the discrete random mechanism on discretely distributed data, e.g., traffic data, health records. This paper focuses on the discrete random noise adding mechanisms. We study the basic differential privacy conditions and properties for the general discrete random mechanisms, as well as the trade-off between data privacy and data utility. Specifically, we derive a sufficient and necessary condition for discrete epsilon-differential privacy and a sufficient condition for discrete (epsilon, delta)-differential privacy, with the numerical estimation of differential privacy parameters. These conditions can be applied to analyze the differential privacy properties for the discrete noise adding mechanisms with various kinds of noises. Then, with the differential privacy guarantees, we propose an optimal discrete epsilon-differential private noise adding mechanism under the utility-maximization framework, where the utility is characterized by the similarity of the statistical properties between the mechanism's input and output. For this setup, we find that the class of the discrete noise probability distributions in the optimal mechanism is Staircase-shaped.