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Privacy FP-Tree

机译:隐私FP树

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摘要

Current technology has made the publication of people's private information a common occurrence. The implications for individual privacy and security are still largely poorly understood by the general public but the risks are undeniable as evidenced by the increasing number of identity theft cases being reported recently. Two new definitions of privacy have been developed recently to help understand the exposure and how to protect individuals from privacy violations, namely, anonymized privacy and personalized privacy. This paper develops a methodology to validate whether a privacy violation exists for a published dataset. Determining whether privacy violations exist is a non-trivial task. Multiple privacy definitions and large datasets make exhaustive searches ineffective and computationally costly. We develop a compact tree structure called the Privacy FP-Tree to reduce the costs. This data structure stores the information of the published dataset in a format that allows for simple, efficient traversal. The Privacy FP-Tree can effectively determine the anonymity level of the dataset as well as identify any personalized privacy violations. This algorithm is O(n log n), which has acceptable characteristics for this application. Finally, experiments demonstrate the approach is scalable and practical.
机译:当前的技术使人们的私人信息公开成为一种普遍现象。公众对个人隐私和安全的影响仍然知之甚少,但近来举报的身份盗窃案件越来越多,证明了这种风险是不可否认的。最近已经开发了两个新的隐私定义,以帮助了解暴露情况以及如何保护个人免受隐私侵害,即匿名隐私和个性化隐私。本文开发了一种方法来验证发布的数据集是否存在侵犯隐私的行为。确定是否存在侵犯隐私是一项艰巨的任务。多个隐私定义和庞大的数据集使穷举搜索无效且计算成本高昂。我们开发了一种紧凑的树结构,称为“隐私FP-Tree”,以降低成本。该数据结构以允许简单,有效遍历的格式存储已发布数据集的信息。隐私FP-Tree可以有效地确定数据集的匿名级别,并识别任何个性化的隐私违规行为。该算法为O(n log n),具有该应用可接受的特征。最后,实验证明该方法是可扩展且实用的。

著录项

  • 来源
  • 会议地点 Brisbane(AU);Brisbane(AU);Brisbane(AU);Brisbane(AU);Brisbane(AU);Brisbane(AU);Brisbane(AU);Brisbane(AU);Brisbane(AU);Brisbane(AU);Brisbane(AU);Brisbane(AU);Brisbane(AU)
  • 作者

    Sampson Pun; Ken Barker;

  • 作者单位

    University of Calgary 2500 University Drive NW Calgary, Alberta, Canada T2N 1N4;

    University of Calgary 2500 University Drive NW Calgary, Alberta, Canada T2N 1N4;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP311.13;
  • 关键词

    privacy; database; FP-tree; anonymized privacy; personalized privacy;

    机译:隐私;数据库; FP树;匿名隐私;个性化隐私;

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