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DP-UserPro: differentially private user profile construction and publication

机译:DP-UserPro:差异私有用户简介构造和出版物

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摘要

User profiles are widely used in the age of big data. However, generating and releasing user profiles may cause serious privacy leakage, since a large number of personal data are collected and analyzed. In this paper, we propose a differentially private user profile construction method DP-UserPro, which is composed of DP-CLIQUE and privately top-k tags selection. DP-CLIQUE is a differentially private high dimensional data cluster algorithm based on CLIQUE. The multidimensional tag space is divided into cells, Laplace noises are added into the count value of each cell. Based on the breadth-first-search, the largest connected dense cells are clustered into a cluster. Then a privately top-k tags selection approach is proposed based on the score function of each tag, to select the most important k tags which can represent the characteristics of the cluster. Privacy and utility of DP-UserPro are theoretically analyzed and experimentally evaluated in the last. Comparison experiments are carried out with Tag Suppression algorithm on two real datasets, to measure the False Negative Rate (FNR) and precision. The results show that DP-UserPro outperforms Tag Suppression by 62.5% in the best case and 14.25% in the worst case on FAT, and DP-UserPro is about 21.1% better on precision than that of Tag Suppression, in average.
机译:用户配置文件广泛使用在大数据的时代。然而,生成和释放用户配置文件可能导致严重的隐私泄漏,因为收集并分析了大量个人数据。在本文中,我们提出了一种差异的私人用户简档施工方法DP-UserPro,它由DP-Clique和私人顶级K标签选择组成。 DP-Clique是基于Clique的差分私有高维数据集群算法。多维标签空间被分成电池,拉普拉斯噪声被添加到每个单元的计数值中。基于广度优先搜索,将最大连接的密集单元聚集到群集中。然后,基于每个标签的分数函数提出了一种私人Top-K标签选择方法,以选择可以表示集群特性的最重要的K标签。理论上和实验评估了DP-UserPro的隐私和效用。比较实验在两个实时数据集上以标签抑制算法进行,测量假负速率(FNR)和精度。结果表明,DP-UserPro在最佳情况下优于标签抑制,在最佳情况下,最坏情况下的14.25%,并且平均值比标签抑制的精度更好地提高21.1%。

著录项

  • 来源
    《Frontiers of computer science》 |2021年第5期|155811.1-155811.10|共10页
  • 作者单位

    Information Technology School Hebei University of Economics and Business Shijiazhuang 050061 China;

    Information Technology School Hebei University of Economics and Business Shijiazhuang 050061 China;

    Information Technology School Hebei University of Economics and Business Shijiazhuang 050061 China;

    The Institute of Applied Mathematics Hebei Academy of Sciences Shijiazhuang 050051 China Hebei Authentication Technology Engineering Research Center Shijiazhuang 050051 China;

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

    user profile; DP-CLIQUE; clustering; differential privacy; recommender system;

    机译:用户资料;dp-clique;聚类;差异隐私;推荐系统;

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