数据挖掘中多级隐私保护的组合随机噪声摄动方法

S. Chidambaram, K. .. Srinivasagan
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引用次数: 10

摘要

如今,社交网络系统、医疗网络、金融机构和零售商等各种企业正在收集和检索大量的个人和敏感数据。有三个主要实体,如数据所有者;数据库服务提供者和客户端主要参与这种基于外包的数据模型。因此,这对于保护所有者的隐私更为重要。隐私保护是数据挖掘中一个具有挑战性的领域。其中,基于数据的隐私扰动技术是在数据发布前进行数据转换的标准模型。提出了适用于多信任级别的加性乘性摄动隐私保护数据挖掘方法(AM-PPDM)。在这种情况下,在数据公布之前,随机噪声扰动被应用于单个值。这种混合方法提高了重构过程中的隐私保证值。在AM-PPDM中,生成的随机高斯噪声与原始数据相乘,在不同的信任级别上产生不同的扰动副本。通过实现这种方法,完全避免了重构过程中的分集攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A combined random noise perturbation approach for multi level privacy preservation in data mining
Now a Days huge volume of personal and sensitive data is collected and retrieved by various enterprises like social networking system, health networks, financial organizations and retailers. There are three main entities such as data owner; the database service provider and the client are mainly involved in this type of outsourced based data model. So that is more essential for the privacy preservation of the owner. Privacy preservation is a main challenging area in data mining. In that, Data based privacy perturbation technique is the standard model which performs the data transformation process before publishing the data. This paper proposes Additive Multiplicative Perturbation Privacy Preserving Data Mining (AM-PPDM) which is suitable for multiple trust level. In that, the random noise perturbation is applied to individual values before the data are published. This hybrid approach improves the privacy guarantee value during the reconstruction process. In AM-PPDM, the generated random Gaussian noise multiplied with the original data to produce different perturbed copies at various trust levels. By implementing this approach, the diversity attack is completely avoided during the reconstruction process.
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