Publicly Verifiable Private Aggregation of Time-Series Data

B. Bakondi, Andreas Peter, M. Everts, P. Hartel, W. Jonker
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引用次数: 2

Abstract

Aggregation of time-series data offers the possibility to learn certain statistics over data periodically uploaded by different sources. In case of privacy sensitive data, it is desired to hide every data provider's individual values from the other participants (including the data aggregator). Existing privacy preserving time-series data aggregation schemes focus on the sum as aggregation means, since it is the most essential statistics used in many applications such as smart metering, participatory sensing, or appointment scheduling. However, all existing schemes have an important drawback: they do not provide verifiable outputs, thus users have to trust the data aggregator that it does not output fake values. We propose a publicly verifiable data aggregation scheme for privacy preserving time-series data summation. We prove its security and verifiability under the XDH assumption and a widely used, strong variant of the Co-CDH assumption. Moreover, our scheme offers low computation complexity on the users' side, which is essential in many applications.
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可公开验证的私有时间序列数据聚合
时间序列数据的聚合提供了学习由不同来源定期上传的数据的某些统计信息的可能性。对于隐私敏感数据,希望对其他参与者(包括数据聚合器)隐藏每个数据提供者的单个值。现有的保护隐私的时间序列数据聚合方案将总和作为聚合手段,因为它是许多应用程序(如智能计量、参与式感知或预约调度)中使用的最基本的统计数据。然而,所有现有的方案都有一个重要的缺点:它们不提供可验证的输出,因此用户必须相信数据聚合器不会输出假值。提出了一种可公开验证的时间序列数据聚合方案。我们在XDH假设和Co-CDH假设的一个广泛使用的强变体下证明了它的安全性和可验证性。此外,我们的方案在用户端提供了较低的计算复杂度,这在许多应用中是必不可少的。
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