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Research on Government Data Publishing Based on Differential Privacy Model

机译:基于差分隐私模型的政府数据发布研究

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With the enforcement of the policies of opening and sharing information resources, protection of citizens' privacy has become a key issue concerned by the government and public. This paper discusses the risk of citizens' privacy disclosure related to government data publishing, and analyzes the main privacy-preserving methods for data publishing. Aiming at the problem that most of the existing privacy protection models for data publishing cannot resist the attacks based on the growing background knowledge, a differential privacy framework for publishing governmental statistical data is established. Based on the framework, a data publishing algorithm using MaxDiff histogram is proposed. Applying differential method, Laplace noises are added to the original dataset, which prevents citizens' privacy from disclosure even if attackers get strong background knowledge. According to the maximum frequency difference, the adjacent data bins are grouped, then the differential privacy histogram with minimum average error can be constructed. Through theoretical analysis and experimental comparison, it is demonstrated that the proposed data publishing algorithm can not only be used to effectively protect citizens' privacy, but also reduce the query sensitivity and improve the utility of the data published.
机译:随着开放和共享信息资源政策的实施,保护公民隐私已成为政府和公众关注的关键问题。本文讨论了与政府数据发布有关的公民隐私披露风险,并分析了数据发布的主要隐私保护方法。针对大多数现有的数据发布隐私保护模型无法抵抗基于不断增长的背景知识的攻击的问题,建立了一种用于发布政府统计数据的差分隐私框架。基于该框架,提出了一种基于MaxDiff直方图的数据发布算法。应用差分方法,将拉普拉斯噪声添加到原始数据集中,即使攻击者获得了深厚的背景知识,也可以防止泄露公民的隐私。根据最大频率差,对相邻数据仓进行分组,然后可以构造平均误差最小的差分隐私直方图。通过理论分析和实验比较,表明所提出的数据发布算法不仅可以有效地保护公民的隐私,而且可以降低查询的敏感性,提高发布数据的效用。

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