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Preserving Friendly-Correlations in Uncertain Graphs Using Differential Privacy

机译:使用微分隐私保护不确定图中的友好相关性

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It is a challenging problem to preserve the friendly-correlations between individuals when publishing social-network data. To alleviate this problem, uncertain graph has been presented recently. The main idea of uncertain graph is converting an original graph into an uncertain form, where the correlations between individuals is an associated probability. However, the existing methods of uncertain graph lack rigorous guarantees of privacy and rely on the assumption of adversary's knowledge. In this paper we first introduced a general model for constructing uncertain graphs. Then, we proposed an algorithm under the model which is based on differential privacy and made an analysis of algorithm's privacy. Our algorithm provides rigorous guarantees of privacy and against the background knowledge attack. Finally, the algorithm we proposed satisfied differential privacy and showed feasibility in the experiments. And then, we compare our algorithm with (k, ε)-obfuscation algorithm in terms of data utility, the importance of nodes for network in our algorithm is similar to (k, ε)-obfuscation algorithm.
机译:在发布社交网络数据时,保持个人之间的友好关系是一个具有挑战性的问题。为了减轻这个问题,最近已经提出了不确定图。不确定图的主要思想是将原始图转换为不确定形式,其中个体之间的相关性是关联的概率。但是,现有的不确定图方法缺乏严格的隐私保证,并且依赖于对手知识的假设。在本文中,我们首先介绍了用于构造不确定图的通用模型。然后,在该模型的基础上提出了一种基于差分隐私的算法,并对算法的隐私进行了分析。我们的算法为隐私和背景知识攻击提供了严格的保证。最后,我们提出的算法满足了差分隐私的要求,并在实验中显示了可行性。然后,在数据效用方面,我们将算法与(k,ε)-混淆算法进行了比较,网络节点在我们算法中的重要性类似于(k,ε)-混淆算法。

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