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Link perturbation in social network analysis through neighborhood randomization

机译:通过邻域随机化的社会网络分析中的链接扰动

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Social network, as a new phenomenon, has opened new venues of research area in many sciences. Most studies on social networks require access to the data, which often contains sensitive information that needs to be anonymized before publication. One of such anonymized approaches is link privacy. A standard technique of link privacy is to probabilistically randomize the destination of a link in the local neighborhood of the source node of link, known as neighborhood randomization technique. In this paper, we propose an algorithm based on neighborhood randomization. Unlike previous studies, the proposed algorithm pays more attention to popular nodes in the social network structure. Given the low number of these nodes and the fact that the links of these nodes are more often threatened, they have been perturbed more than other nodes to preserve the privacy of popular nodes. The algorithm has been evaluated using real life social network data.
机译:社交网络,作为一种新的现象,在许多科学中开辟了研究区的新场地。关于社交网络的大多数研究都需要访问数据,这些数据通常包含在发布之前需要匿名的敏感信息。这种匿名的方法之一是链接隐私。链接隐私的标准技术是概率地将链路的本地邻域的链路的目的地概括地随机化,称为邻域随机化技术。在本文中,我们提出了一种基于邻域随机化的算法。与以前的研究不同,所提出的算法更多地关注社交网络结构中的流行节点。鉴于这些节点的数量低,并且这些节点的链接更常见的事实,它们已经扰乱了比其他节点更多,以保留流行节点的隐私。使用真实生活社交网络数据进行评估。

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