基于随机响应的隐私感知社区感知

Shunsuke Aoki, M. Iwai, K. Sezaki
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引用次数: 4

摘要

社区感知是一种新兴的系统,它允许越来越多的移动电话用户有效地分享他们自己收集的微小统计信息。该系统依赖于参与者的积极贡献,包括通过手机应用程序(如Facebook, Twitter和Linkdin)有意输入数据。然而,一些隐私问题将阻碍社区传感应用的推广。资源受限的手机很难依赖复杂的加密方案。我们应该准备一种计算复杂度较低的保护隐私的社区感知方案。此外,由于统计数据的质量取决于一般用户的积极贡献,因此迫切需要一个让参与者安心进行社区感知的环境。在本文中,我们提出了一种基于负面调查和随机响应技术的隐私保护社区感知方案,用于以人为中心的数据,如个人资料信息。通过本文所述的方法,服务器可以在不侵犯用户隐私的情况下重建原始感知值分布的概率分布。特别是,我们可以保护敏感信息免受恶意跟踪攻击。我们评估了该方案如何在保持聚合信息完整性的同时保护隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-Aware Community Sensing Using Randomized Response
Community sensing is an emerging system which allows the increasing number of mobile phone users to share effectively minute statistical information collected by themselves. This system relies on participants' active contribution including intentional input data through mobile phone's applications, e.g. Facebook, Twitter and Linkdin. However, a number of privacy concerns will hinder the spread of community sensing applications. It is difficult for resource-constrained mobile phones to rely on complicated encryption scheme. We should prepare a privacy-preserving community sensing scheme with less computational-complexity. Moreover, an environment that is reassuring for participants to conduct community sensing is strongly required because the quality of the statistical data is depending on general users' active contribution. In this article, we suggest a privacy-preserving community sensing scheme for human-centric data such as profile information by using the combination of negative surveys and randomized response techniques. By using our method described in this paper, the server can reconstruct the probability distributions of the original distributions of sensed values without violating the privacy of users. Especially, we can protect sensitive information from malicious tracking attacks. We evaluated how this scheme can preserve the privacy while keeping the integrity of aggregated information.
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