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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Preventing Private Information Inference Attacks on Social Networks
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Preventing Private Information Inference Attacks on Social Networks

机译:防止对社交网络的私人信息推理攻击

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摘要

Online social networks, such as Facebook, are increasingly utilized by many people. These networks allow users to publish details about themselves and to connect to their friends. Some of the information revealed inside these networks is meant to be private. Yet it is possible to use learning algorithms on released data to predict private information. In this paper, we explore how to launch inference attacks using released social networking data to predict private information. We then devise three possible sanitization techniques that could be used in various situations. Then, we explore the effectiveness of these techniques and attempt to use methods of collective inference to discover sensitive attributes of the data set. We show that we can decrease the effectiveness of both local and relational classification algorithms by using the sanitization methods we described.
机译:诸如Facebook之类的在线社交网络越来越多地被人们所利用。这些网络允许用户发布有关自己的详细信息并与朋友联系。这些网络内部显示的某些信息是私有的。但是,可以对已发布的数据使用学习算法来预测私人信息。在本文中,我们探索了如何使用发布的社交网络数据来发起推理攻击以预测私人信息。然后,我们设计出三种可以在各种情况下使用的消毒技术。然后,我们探索这些技术的有效性,并尝试使用集体推断的方法来发现数据集的敏感属性。我们表明,通过使用我们描述的清理方法,我们可以降低局部和关系分类算法的有效性。

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