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首页> 外文期刊>IEEE transactions on mobile computing >PLP: Protecting Location Privacy Against Correlation Analyze Attack in Crowdsensing
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PLP: Protecting Location Privacy Against Correlation Analyze Attack in Crowdsensing

机译:PLP:保护位置隐私免受相关性分析在人群感知中的攻击

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摘要

Crowdsensing applications require individuals to share local and personal sensing data with others to produce valuable knowledge and services. Meanwhile, it has raised concerns especially for location privacy. Users may wish to prevent privacy leak and publish as many non-sensitive contexts as possible. Simply suppressing sensitive contexts is vulnerable to the adversaries exploiting spatio-temporal correlations in the user's behavior. In this work, we present PLP, a crowdsensing scheme which preserves privacy while it maximizes the amount of data collection by filtering a user’s context stream. PLP leverages a conditional random field to model the spatio-temporal correlations among the contexts, and proposes a speed-up algorithm to learn the weaknesses in the correlations. Even if the adversaries are strong enough to know the filtering system and the weaknesses, PLP can still provably preserve privacy, with little computational cost for online operations. PLP is evaluated and validated over two real-world smartphone context traces of 34 users. The experimental results show that PLP efficiently protects privacy without sacrificing much utility.
机译:人群感知应用程序要求个人与他人共享本地和个人感知数据,以产生有价值的知识和服务。同时,它引起了人们的关注,特别是对于位置隐私。用户可能希望防止隐私泄露并发布尽可能多的非敏感上下文。攻击者利用用户行为中的时空相关性,简单地压制敏感上下文就很容易受到对手的攻击。在这项工作中,我们提出了一种PLP,这是一种群众感知方案,可以保留隐私,同时通过过滤用户的上下文流来最大化数据收集量。 PLP利用条件随机场对上下文之间的时空相关性进行建模,并提出一种加速算法来学习相关性中的弱点。即使对手足够强大,足以知道过滤系统和弱点,PLP仍然可以证明可保护隐私,而在线操作的计算成本却很少。通过对34位用户的两次真实世界的智能手机上下文跟踪,对PLP进行了评估和验证。实验结果表明,PLP在不牺牲实用性的情况下有效地保护了隐私。

著录项

  • 来源
    《IEEE transactions on mobile computing 》 |2017年第9期| 2588-2598| 共11页
  • 作者单位

    School of Software and TNList, Tsinghua University, Haidian Qu, Beijing Shi, China;

    Google Research;

    School of Software and TNList, Tsinghua University, Haidian Qu, Beijing Shi, China;

    School of Software and TNList, Tsinghua University, Haidian Qu, Beijing Shi, China;

    School of Computer Science and Technology, University of Science and Technology of China, Hefei, Anhui, P.R. China;

    Department of Computer and Software, McMaster University, Canada;

    School of Software and TNList, Tsinghua University, Haidian Qu, Beijing Shi, China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Hidden Markov models; Correlation; Privacy; Sensors; Data privacy; Servers; Context;

    机译:隐马尔可夫模型关联隐私传感器数据隐私服务器上下文;

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