最优和差异化私有数据获取:中央和局部机制

Alireza Fallah, A. Makhdoumi, Azarakhsh Malekian, A. Ozdaglar
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引用次数: 13

摘要

我们考虑平台从隐私敏感用户收集数据以估计感兴趣的潜在参数的问题。我们将这个问题表述为贝叶斯最优机制设计问题,其中个人可以共享她的(可验证的)数据以换取货币奖励或服务,但同时有(私有的)异构隐私成本,我们使用差分隐私来量化。我们考虑了为用户提供隐私保障的两种流行的差异隐私设置:中央和本地。在这两种情况下,我们建立了估计误差的最小最大下界,并为给定的用户异构隐私丢失水平导出了(接近)最优估计。在此特征的基础上,我们提出了机制设计问题,即估算器和支付的最佳选择,这将引发用户隐私敏感性的真实报告。在隐私敏感性分布的规则性条件下,我们开发了有效的算法机制来解决这两种隐私设置下的问题。我们在中心设置中的机制可以在O (n log n)时间内实现,其中n是用户数量,我们在局部设置中的机制允许多项式时间近似方案(PTAS)。全文可在https://arxiv.org/abs/2201.03968上找到
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Optimal and Differentially Private Data Acquisition: Central and Local Mechanisms
We consider a platform's problem of collecting data from privacy sensitive users to estimate an underlying parameter of interest. We formulate this question as a Bayesian-optimal mechanism design problem, in which an individual can share her (verifiable) data in exchange for a monetary reward or services, but at the same time has a (private) heterogeneous privacy cost which we quantify using differential privacy. We consider two popular differential privacy settings for providing privacy guarantees for the users: central and local. In both settings, we establish minimax lower bounds for the estimation error and derive (near) optimal estimators for given heterogeneous privacy loss levels for users. Building on this characterization, we pose the mechanism design problem as the optimal selection of an estimator and payments that will elicit truthful reporting of users' privacy sensitivities. Under a regularity condition on the distribution of privacy sensitivities we develop efficient algorithmic mechanisms to solve this problem in both privacy settings. Our mechanism in the central setting can be implemented in time O (n log n) where n is the number of users and our mechanism in the local setting admits a Polynomial Time Approximation Scheme (PTAS). The full paper is available at: https://arxiv.org/abs/2201.03968
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