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PDCS: A Privacy-Preserving Distinct Counting Scheme for Mobile Sensing

机译:PDCS:一种用于移动传感的保护隐私的独特计数方案

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摘要

Mobile sensing mines group information through sensing and aggregating users' data. Among major mobile sensing applications, the distinct counting problem aiming to find the number of distinct elements in a data stream with repeated elements, is extremely important for avoiding waste of resources. Besides, the privacy protection of users is also a critical issue for aggregation security. However, it is a challenge to meet these two requirements simultaneously since normal privacy-preserving methods would have negative influence on the accuracy and efficiency of distinct counting. In this paper, we propose a Privacy-preserving Distinct Counting Scheme (PDCS) for mobile sensing. By integrating the basic idea of homomorphic encryption into Flajolet-Martin (FM) sketch, PDCS allows an aggregator to conduct distinct counting over large-scale data sets without knowing privacy of users. Moreover, PDCS supports various forms of sensing data, including camera images, location data, etc. PDCS expands each bit of the hashing values of users' original data, FM sketch is thus enhanced for encryption to protect users' privacy. We prove the security of PDCS under known-plaintext model. The theoretic and experimental results show that PDCS achieves high counting accuracy and practical efficiency with scalability over large-scale data sets.
机译:移动感测通过感测和汇总用户数据来挖掘信息。在主要的移动感测应用程序中,旨在找到具有重复元素的数据流中不同元素的数量的不同计数问题对于避免浪费资源极为重要。此外,用户的隐私保护也是聚合安全性的关键问题。但是,同时满足这两个要求是一个挑战,因为常规的隐私保护方法将对不重复计数的准确性和效率产生负面影响。在本文中,我们提出了一种用于移动传感的隐私保护区分计数方案(PDCS)。通过将同态加密的基本思想集成到Flajolet-Martin(FM)草图中,PDCS允许聚合器在不知道用户隐私的情况下对大规模数据集进行不同的计数。此外,PDCS支持各种形式的传感数据,包括摄像机图像,位置数据等。PDCS扩展了用户原始数据的哈希值的每一位,因此增强了FM草图以进行加密以保护用户的隐私。我们在已知明文模型下证明了PDCS的安全性。理论和实验结果表明,PDCS在大规模数据集上具有较高的计数精度和实用效率,并且具有可扩展性。

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