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Sensitive Label Privacy Preservation with Anatomization for Data Publishing

机译:敏感标签隐私保存与数据发布的解剖化

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摘要

Data in its original form, however, typically contain sensitive information about individuals. Directly publishing raw data will violate the privacy of people involed. Consequently, it becomes increasingly important to preserve the privacy of published data. An attacker is apt to identify an individual from the published tables, with attacks through the record linkage, attribute linkage, table linkage or probabilistic attack. Although algorithms based on generalization and suppression have been proposed to protect the sensitive attributes and resist these multiple types of attacks, they often suffer from large information loss by replacing specific values with more general ones. Alternatively, anatomization and permutation operations can de-link the relation between attributes without modifying them. In this paper, we propose a scheme Sensitive Label Privacy Preservation with Anatomization (SLPPA) to protect the privacy of published data. SLPPA includes two procedures, table division and group division. During the table division, we adopt entropy and mean-square contingency coefficient to partition attributes into separate tables to inject uncertainty for reconstructing the original table. During the group division, all the individuals in the original table are partitioned into non-overlapping groups so that the published data satisfies the pre-defined privacy requirements of our (alpha,beta,gamma,delta) model. Two comprehensive sets of real-world relationship data are applied to evaluate the performance of our anonymization approach. Simulations and privacy analysis show our scheme possesses better privacy while ensuring higher utility.
机译:然而,其原始形式的数据通常包含有关个人的敏感信息。直接发布原始数据将违反人们占用的隐私。因此,保留公布数据的隐私变得越来越重要。攻击者暂时识别来自已发布表的个人,通过攻击通过记录链接,属性链接,表链接或概率攻击。尽管已经提出了基于泛化和抑制的算法来保护敏感属性并抵抗这些多种类型的攻击,但它们通常通过更换更换的特定值来遭受大的信息损失。或者,解剖化和置换操作可以在不修改它们的情况下将属性之间的关系解除。在本文中,我们提出了一个方案敏感标签隐私保存与解剖结构(SLPPA),以保护已发布数据的隐私。 SLPPA包括两个程序,表分部和集团部门。在表划分期间,我们采用熵和均方应急系数将属性分区属性分为单独的表,以注入重建原始表的不确定性。在组划分期间,原始表中的所有个人都被分成非重叠组,以便发布的数据满足我们(Alpha,Beta,Gamma,Delta)模型的预定义隐私要求。两组全面的真实关系数据应用于评估我们匿名化方法的性能。模拟和隐私分析表明我们的计划具有更好的隐私,同时确保更高的效用。

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  • 作者单位

    Dalian Univ Technol DUT RU Int Sch Informat Sci & Engn Key Lab Ubiquitous Network & Serv Software Liaoni Dalian 116081 Peoples R China;

    Dalian Univ Technol Sch Software Key Lab Ubiquitous Network & Serv Software Liaoni Dalian 116081 Peoples R China;

    SUNY Stony Brook Dept Elect & Comp Engn Stony Brook NY 11794 USA;

    Dalian Univ Technol Sch Software Key Lab Ubiquitous Network & Serv Software Liaoni Dalian 116081 Peoples R China;

    Dalian Univ Technol Sch Software Key Lab Ubiquitous Network & Serv Software Liaoni Dalian 116081 Peoples R China;

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

    Privacy preservation; anatomization; sensitive label;

    机译:隐私保存;解剖结构;敏感标签;

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