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Preserving Utility in Social Network Graph Anonymization

机译:在社交网络图匿名化中保留实用程序

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摘要

To protect from privacy disclosure, the social network graph is modified in order to hide the information that potentially be used to disclose person's identity. However, when the social network graph is changed, it is a great challenge to balance between the privacy gained and the loss of data utility. In this paper, we address this problem. We propose a new graph topological-based metric to improve utility preservation in social network graph anonymization. We compare the proposed approach with the amount-of-edge-change metric that popularly used in most of previous works. Experimental evaluation shows that our approach generates anonymized social network with improved utility preservation.
机译:为了防止隐私泄露,对社交网络图进行了修改,以便隐藏可能用于泄露个人身份的信息。但是,当更改社交网络图时,要在获得的隐私和丢失数据实用性之间取得平衡是一个巨大的挑战。在本文中,我们解决了这个问题。我们提出了一种新的基于图拓扑的度量,以改善社交网络图匿名化中的效用保留。我们将提出的方法与大多数以前的作品中普遍使用的边缘变化量度量进行了比较。实验评估表明,我们的方法生成了具有改进的效用保存功能的匿名社交网络。

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