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Preservation of Attribute Couplet Attack by Node Addition in Social Networks

机译:社交网络中的节点添加物质对联攻击的保存

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Social Network is one of the most desired platform where an immense amount of data are available from many different social platforms. Publishing data without hiding sensitive data or diplomatic data about individuals is a crucial problem which cannot guarantees the privacy. Therefore published data needs to remove identifying particulars of the individuals (anonymized) before the data is released. Anonymizing data is more challenging and a popular privacy preserving model for data publishing in social networks. However even after anonymizing the data sets, attackers try to find new methods to derive private information of individuals with some background knowledge and identify them. One of such method is attribute couplet attack where the attacker has some background information about the data and derive the identity using a pair of node attributes. In the existing approach, the k-couplet anonymity achieves the privacy under the attribute couplet attack by using edge modification approach. This will change the distance properties between nodes and might also introduce undesirable and misleading fake relations. In this paper, we design an algorithm named Couplet Anonymization by using node addition approach. Adding new nodes and connecting them to some of the nodes in the original network can avoid this attribute couplet attack and gives a better chance to preserve the network properties. This node addition helps to reduce the misleading fake relations and also preserves the utility of the social networks.
机译:社交网络是最需要的平台,在这里都可以从许多不同的社交平台上的数据的巨大量的一个。不隐藏关于个人的敏感数据或外交数据发布的数据是不能保证隐私的一个关键问题。因此公布的数据的需要以除去识别所述个体的详情(匿名)被释放的数据之前。匿名数据是更具挑战性和受欢迎的隐私保护数据在社交网络出版模式。然而,即使在匿名的数据集之后,攻击者试图找到新的方法,以个人的派生私人信息的一些背景知识和识别它们。一种这样的方法的是属性对联攻击,其中攻击者具有对数据的一些背景信息和导出使用一对节点的属性的标识。在现有的方法中,第k-对联匿名通过使用边缘改性方法实现了该属性对联攻击下的隐私。这将改变节点之间的距离性质,也可能会带来不良和误导性虚假关系。在本文中,我们通过使用节点添加方法设计一个名为对联匿名化的算法。增加新的节点,将它们连接到原有的一些网络能够避免这种属性对联攻击的节点,并给出了一个更好的机会,以保持网络性能。此节点除了有利于减少误导假冒关系,还保留了社交网络的效用。

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