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首页> 外文期刊>International journal of data science >Privacy preserving solution to prevent classification inference attacks in online social networks
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Privacy preserving solution to prevent classification inference attacks in online social networks

机译:隐私保留解决方案以防止在线社交网络中的分类推论攻击

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摘要

In order to improve their business solutions the data holders often release the social network data and its structure to the third party. This data undergo node and attribute anonymisation before its release. This however does not prevent the users from inference attacks which an un-trusted third party or an adversary would carry out at their end by analysing the structure of the graph. Therefore, there is an utmost necessity to not only anonymise the nodes and their attributes but also to anonymise the edge sets in the released social network graph. Anonymising involves perturbing the actual data which results in utility loss. Ensuring utility and preserving privacy are inversely proportional to each other and is a challenging task. In this work we have proposed, implemented and verified an efficient utility based privacy preserving solution to prevent the third party inference attacks for an online social network graph.
机译:为了改善他们的业务解决方案,数据持有者通常将社交网络数据及其结构释放到第三方。 此数据在发布之前经过节点并属性匿名。 然而,这并没有阻止用户通过分析图表结构的不可信任的第三方或对手的推论攻击。 因此,最重要的是不仅要匿名节点和它们的属性,而且还必须对释放的社交网络图中的边缘集中的匿名集。 匿名涉及扰乱了导致公用事业损失的实际数据。 确保效用和保存隐私彼此成反比,是一个具有挑战性的任务。 在这项工作中,我们提出了基础的基于实用程序的隐私保存解决方案,以防止对在线社交网络图的第三方推断攻击。

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