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A Utility-Optimized Framework for Personalized Private Histogram Estimation (Extended Abstract)

机译:实用程序优化的个性化私人直方图估计框架(扩展摘要)

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Local differential privacy (LDP), as a strong and practical notion, has been applied to deal with privacy issues in data collection. However, existing LDP-based strategies mainly focus on utility optimization at a single privacy level while ignoring various privacy preferences of data providers and multilevel privacy demands for statistics. In this poster, we for the first time propose a framework to optimize the utility of histogram estimation with these two privacy requirements. To clarify the goal of privacy protection, we personalize the traditional definition of LDP. We design two independent approaches to minimize the utility loss: Advanced Combination, which composes multilevel results for utility optimization, and Data Recycle with Personalized Privacy, which enlarges sample size for an estimation. We demonstrate their effectiveness on privacy and utility. Moreover, we embed these approaches within a Recycle and Combination Framework and prove that the framework stably achieves the optimal utility by quantifying its error bounds. On real-world datasets, our approaches are experimentally validated and remarkably outperform baseline methods.
机译:作为一种强大而实用的概念,本地差分隐私(LDP)已用于处理数据收集中的隐私问题。但是,现有的基于LDP的策略主要侧重于单个隐私级别的效用优化,而忽略了数据提供者的各种隐私首选项以及对统计数据的多级别隐私需求。在此海报中,我们首次提出了一个框架,可根据这两个隐私要求来优化直方图估计的实用性。为了阐明隐私保护的目标,我们将LDP的传统定义个性化。我们设计了两种独立的方法来最大程度地减少实用程序的损失:高级组合(用于组合实用程序优化的多级结果)和具有个性化隐私的数据回收(用于扩大估计量)。我们证明了它们在隐私和实用性方面的有效性。此外,我们将这些方法嵌入到“回收与组合框架”中,并证明了该框架通过量化其误差范围来稳定地实现了最佳效用。在现实世界的数据集上,我们的方法经过实验验证,并且明显优于基线方法。

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