使用DPComp探索隐私-准确性的权衡

Michael Hay, Ashwin Machanavajjhala, G. Miklau, Yan Chen, Dan Zhang, G. Bissias
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引用次数: 15

摘要

差分隐私作为隐私保护的主要标准的出现,导致了研究界为各种数据分析任务开发了数百种算法。然而,由于算法的复杂性,以及对采用差分隐私所隐含的准确性成本的不完全理解,这些技术的部署已经放缓。在本演示中,我们介绍了DPComp,这是一个可公开访问的基于web的系统,旨在支持广泛的用户社区,包括数据分析师、隐私研究人员和数据所有者。用户可以使用DPComp来评估最先进的隐私算法的准确性,并交互式地探索算法输出,以便定量和定性地了解算法引入的误差。此外,用户可以贡献新的算法和新的(非敏感的)数据集。DPComp根据Hay等人(SIGMOD 2016)提出的严格评估方法,自动将用户贡献纳入不断发展的基准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Privacy-Accuracy Tradeoffs using DPComp
The emergence of differential privacy as a primary standard for privacy protection has led to the development, by the research community, of hundreds of algorithms for various data analysis tasks. Yet deployment of these techniques has been slowed by the complexity of algorithms and an incomplete understanding of the cost to accuracy implied by the adoption of differential privacy. In this demonstration we present DPComp, a publicly-accessible web-based system, designed to support a broad community of users, including data analysts, privacy researchers, and data owners. Users can use DPComp to assess the accuracy of state-of-the-art privacy algorithms and interactively explore algorithm output in order to understand, both quantitatively and qualitatively, the error introduced by the algorithms. In addition, users can contribute new algorithms and new (non-sensitive) datasets. DPComp automatically incorporates user contributions into an evolving benchmark based on a rigorous evaluation methodology articulated by Hay et al. (SIGMOD 2016).
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