Participant-Density-Aware Privacy-Preserving Aggregate Statistics for Mobile Crowd-Sensing

Jianwei Chen, Huadong Ma, David S. L. Wei, Dong Zhao
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引用次数: 13

Abstract

Mobile crowd-sensing applications produce useful knowledge of the surrounding environment, which makes our life more predictable. However, these applications often require people to contribute, consciously or unconsciously, location-related data for analysis, and this gravely encroaches users' location privacy. Aggregate processing is a feasible way for preserving user privacy to some extent, and based on the mode, some privacy-preserving schemes have been proposed. However, existing schemes still cannot guarantee users' location privacy in the scenarios with low density participants. Meanwhile, user accountability also needs to be considered comprehensively to protect the system from malicious users. In this paper, we propose a participant-density-aware privacy-preserving aggregate statistics scheme for mobile crowd-sensing applications. In our scheme, we make use of multi-pseudonym mechanism to overcome the vulnerability due to low participant density. To further handle sybil attacks, based on the Paillier cryptosystem and non-interactive zero-knowledge verification, we advance and improve our solution framework, which also covers the problem of user accountability. Finally, the theoretical analysis indicates that our scheme achieves the desired properties, and the performance experiments demonstrate that our scheme can achieve a balance among accuracy, privacy-protection and computational overhead.
面向移动人群感知的参与者密度感知隐私保护聚合统计
移动人群感应应用程序产生对周围环境的有用信息,使我们的生活更可预测。然而,这些应用程序往往需要人们有意无意地提供与位置相关的数据进行分析,这严重侵犯了用户的位置隐私。聚合处理在一定程度上是保护用户隐私的一种可行方法,并在此基础上提出了一些隐私保护方案。然而,现有的方案在参与者密度较低的场景下仍然不能保证用户的位置隐私。同时,还需要综合考虑用户责任,保护系统免受恶意用户的侵害。在本文中,我们提出了一种用于移动人群传感应用的参与者密度感知隐私保护聚合统计方案。在我们的方案中,我们利用多假名机制来克服由于参与者密度低而导致的漏洞。为了进一步应对sybil攻击,基于Paillier密码系统和非交互式零知识验证,我们提出并改进了我们的解决方案框架,该框架还涵盖了用户问责问题。最后,理论分析表明,我们的方案达到了预期的性能,性能实验表明,我们的方案可以在准确性、隐私保护和计算开销之间取得平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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