Abstract Privacy-based recommendation mechanism in mobile participatory sensing systems using crowdsourced users' preferences
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Privacy-based recommendation mechanism in mobile participatory sensing systems using crowdsourced users' preferences

机译:使用众包用户偏好的移动参与式传感系统中基于隐私的推荐机制

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摘要

AbstractParticipatory sensing has been pioneered as a novel sensing pattern to collect and interpret information from the environment using ubiquitous and ever-more-capable mobile devices. One of the main obstacles for long-term participation in such systems are users’ privacy concerns. Due to the nature of these systems, users have to agree to provide some personal information, which may lead to privacy disclosure. This risk will dampen users’ enthusiasm to participate in sensing activities, and diminish the advantage of participatory sensing accordingly. To mitigate the privacy risk, our basic is to make recommendations to users about what data can be provided based on their privacy preferences when they are in the mobile participatory sensing systems. We proposePriRe, a privacy-based recommendation mechanism. More specifically, PriRe first measures privacy risks based on user preferences towards data sharing in participatory sensing systems and then make the recommendation according to the measurement. Further, we implemented and deployed PriRe in the real world as a user study for evaluation. The study shows that PriRe can measure the users’ privacy accurate and provide effective recommendations to users for data sharing in mobile participatory sensing systems. It is also accepted by the users as a trustworthy tool.
机译: 摘要 参与式感应已成为一种新颖的感应模式,可以使用无处不在且功能越来越强大的移动设备从环境中收集和解释信息。长期参与此类系统的主要障碍之一是用户的隐私问题。由于这些系统的性质,用户必须同意提供一些个人信息,这可能会导致隐私泄露。这种风险将削弱用户参与感测活动的热情,并相应地降低参与式感测的优势。为了减轻隐私风险,我们的基本原则是根据用户在移动参与式感应系统中时的隐私偏好,向用户提出有关可以提供哪些数据的建议。我们提出基于隐私的推荐机制 PriRe 。更具体地说,PriRe首先根据用户对参与式传感系统中数据共享的偏好来衡量隐私风险,然后根据该度量提出建议。此外,我们在现实世界中实施和部署了PriRe,作为用户研究进行评估。研究表明,PriRe可以准确测量用户的隐私,并为用户提供有效的建议,以便在移动参与式感应系统中共享数据。它也被用户接受为值得信赖的工具。

著录项

  • 来源
    《Future generation computer systems》 |2018年第3期|76-88|共13页
  • 作者单位

    Guangxi Key Laboratory of Multimedia Communications and Network Technology, school of computer and electronics information, Guangxi University,Department of Computer Science, National University of Singapore;

    Guangxi Key Laboratory of Multimedia Communications and Network Technology, school of computer and electronics information, Guangxi University;

    Department of Statistics, Virginia Polytechnic Institute and State University;

    College of Software, Northeastern University;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Mobile participatory sensing; Crowdsourcing; Rasch model;

    机译:移动参与式感知众包Rasch模型;

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