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Bayesian Networks-Based Data Publishing Method Using Smooth Sensitivity

机译:基于贝叶斯网络的平滑灵敏度数据发布方法

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摘要

The issue of privacy protection in data publishing is an important topic in the field of information security. How to prevent the disclosure of sensitive information has become a hot topic of research. Due to the large data volume and the high correlation, high-dimensional data leads to poor data utility when data is published by differential privacy. Although the current high-dimensional data publishing methods can solve the problem of high-dimensional data publishing, the published synthetic data is of poor utility. In order to improve the utility of the published synthetic data, this paper proposes a Bayesian network-based data publishing method, which makes use of the concept of smooth sensitivity, to analyze the actual data set, which can reduce the added noise while achieving differential privacy and improve the utility of published data. The experiments are performed on real datasets and compared with the PrivBayes method to verify that the proposed method has advantages in data utility.
机译:数据发布中的隐私保护问题是信息安全领域的重要主题。如何防止敏感信息的泄露已成为研究的热点。由于数据量大且相关性高,因此在通过差异隐私发布数据时,高维数据会导致数据实用性较差。尽管当前的高维数据发布方法可以解决高维数据发布的问题,但是已发布的合成数据的实用性很差。为了提高已发布的合成数据的实用性,本文提出了一种基于贝叶斯网络的数据发布方法,该方法利用平滑敏感度的概念来分析实际数据集,从而可以在增加噪声的同时减少差分。隐私并提高已发布数据的实​​用性。在真实数据集上进行了实验,并与PrivBayes方法进行了比较,以验证该方法在数据实用性方面具有优势。

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