Privacy-Preserving Data Aggregation Framework for Mobile Service Based Multiuser Collaboration

Hai Liu, Zhenqiang Wu, Changgen Peng, Feng Tian, Laifeng Lu
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Abstract

Considering the untrusted server, differential privacy and local differential privacy has been used for privacy-preserving in data aggregation. Through our analysis, differential privacy and local differential privacy cannot achieve Nash equilibrium between privacy and utility for mobile service based multiuser collaboration, which is multiuser negotiating a desired privacy budget in a collaborative manner for privacy-preserving. To this end, we proposed a Privacy-Preserving Data Aggregation Framework (PPDAF) that reached Nash equilibrium between privacy and utility. Firstly, we presented an adaptive Gaussian mechanism satisfying Nash equilibrium between privacy and utility by multiplying expected utility factor with conditional filtering noise under expected privacy budget. Secondly, we constructed PPDAF using adaptive Gaussian mechanism based on negotiating privacy budget with heuristic obfuscation. Finally, our theoretical analysis and experimental evaluation showed that the PPDAF could achieve Nash equilibrium between privacy and utility. Furthermore, this framework can be extended to engineering instances in a data aggregation setting
基于多用户协作的移动服务数据聚合框架
考虑到不可信服务器,采用差分隐私和本地差分隐私进行数据聚合中的隐私保护。通过我们的分析,差分隐私和局部差分隐私在基于移动服务的多用户协作中不能实现隐私和效用的纳什均衡,即多用户以协作的方式协商期望的隐私预算以保护隐私。为此,我们提出了一种隐私保护数据聚合框架(PPDAF),该框架在隐私和效用之间达到纳什均衡。首先,在期望隐私预算下,将期望效用因子与条件滤波噪声相乘,提出了一种满足隐私与效用纳什均衡的自适应高斯机制;其次,基于启发式混淆协商隐私预算的自适应高斯机制构建了PPDAF;最后,理论分析和实验评价表明,PPDAF能够实现隐私与效用的纳什均衡。此外,该框架可以扩展到数据聚合设置中的工程实例
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