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A Privacy Reinforcement Approach against De-identified Dataset

机译:针对未识别数据集的隐私增强方法

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Protection of individual privacy has been a key issue for the corresponding data dissemination. Nowadays powerful search utilities increase the re-identification risk by easier information collection as well as validation than before. Despite there usually performs certain de-identified process, attackers may recognize someone from released dataset with which attacker-owned information is matched. In this paper, we propose an approach to mitigate the identity disclosure problem by generating plurals in a given dataset. The approach leverages decision tree to help selection of quasi-identifier and several masking techniques can be employed for privacy reinforcement. In addition to different privacy metrics applicability, the approach can achieve better trade-off between data integrity and privacy protection through flexible data masking.
机译:保护个人隐私已成为相应数据分发的关键问题。如今,功能强大的搜索实用程序比以前更容易收集信息和进行验证,从而增加了重新识别的风险。尽管通常执行某些去识别过程,但攻击者可能会从已发布的数据集中识别出与攻击者拥有的信息相匹配的某人。在本文中,我们提出了一种通过在给定的数据集中生成复数来减轻身份披露问题的方法。该方法利用决策树来帮助选择准标识符,并且可以采用几种屏蔽技术来增强隐私。除了不同的隐私度量适用性之外,该方法还可以通过灵活的数据屏蔽在数据完整性和隐私保护之间实现更好的折衷。

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