Differential Privacy Online Learning Based on the Composition Theorem

Pinru Jiang, Shizhong Liao
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Abstract

Privacy protection is becoming more and more important in the era of big data. Differential privacy is a rigorous and provable privacy protection method that can protect privacy for a single piece of data. But existing differential privacy online learning methods have great limitations in the scope of application and accuracy. Aiming at this problem, we propose a more general and accurate algorithm, named DPOL-CT, for differential privacy online learning. We first distinguish the difference in differential privacy protection between offline learning and online learning. Then we prove that the DPOL-CT algorithm achieves (∊, δ)-differential privacy for online learning under the Gaussian, the Laplace and the Staircase mechanisms and enjoys a sublinear expected regret bound. We further discuss the trade-off between the differential privacy level and the regret bound. Theoretical analysis and experimental results show that the DPOL-CT algorithm has good performance guarantees.
基于复合定理的差分隐私在线学习
在大数据时代,隐私保护变得越来越重要。差分隐私是一种严格的、可证明的隐私保护方法,可以对单个数据进行隐私保护。但现有的差分隐私在线学习方法在适用范围和准确性上存在很大的局限性。针对这一问题,我们提出了一种更通用、更精确的差分隐私在线学习算法DPOL-CT。我们首先区分了离线学习和在线学习在差异隐私保护方面的差异。然后证明了DPOL-CT算法在高斯、拉普拉斯和阶梯机制下实现了在线学习的(,δ)微分隐私性,并具有次线性期望后悔界。我们进一步讨论了差分隐私水平和后悔界限之间的权衡。理论分析和实验结果表明,DPOL-CT算法具有良好的性能保证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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