隐藏安全吗?社交网络中防止机器学习预测攻击的位置保护

MIS Q. Pub Date : 2021-06-01 DOI:10.25300/misq/2021/16266
Xiao Han, Leye Wang, Weiguo Fan
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引用次数: 7

摘要

用户隐私保护是在线社交网络关注的一个重要问题。尽管用户经常有意将其私有信息隐藏在osn中,但由于攻击者可能会使用先进的机器学习技术进行预测攻击来预测隐藏的信息,因此用户打算隐藏的私有信息可能仍有暴露的风险。以当前Facebook个人资料中列出的城市为例,我们提出了一种估算和管理用户隐藏信息暴露风险的解决方案。首先,我们使用最先进的机器学习算法模拟积极的预测攻击,通过提出一个新的当前城市预测框架,该框架集成了基于用户暴露的各种类型信息的位置指示,包括人口统计属性、行为和关系。其次,研究预测攻击的结果,建立预测正确性的模型(因为正确的预测会导致信息暴露),并构建暴露风险估计器。所提出的暴露风险估计器不仅能够通知用户与其隐藏的当前城市相关的暴露风险,而且还可以通过检修和选择对策来帮助用户减轻暴露风险。此外,我们的暴露风险估计器可以促进对OSN用户群体暴露风险的实证研究,从而改善OSN的隐私管理。以当前的城市为例,这项工作为如何保护其他类型的私人信息免受机器学习预测攻击提供了见解,并揭示了实践管理和未来研究的几个重要含义。
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Is Hidden Safe? Location Protection against Machine-Learning Prediction Attacks in Social Networks
User privacy protection is a vital issue of concern for online social networks (OSNs). Even though users often intentionally hide their private information in OSNs, since adversaries may conduct prediction attacks to predict hidden information using advanced machine learning techniques, private information that users intend to hide may still be at risk of being exposed. Taking the current city listed on Facebook profiles as a case, we propose a solution that estimates and manages the exposure risk of users’ hidden information. First, we simulate an aggressive prediction attack using advanced state-of-the-art machine learning algorithms by proposing a new current city prediction framework that integrates location indications based on various types of information exposed by users, including demographic attributes, behaviors, and relationships. Second, we study prediction attack results to model patterns of prediction correctness (as correct predictions lead to information exposures) and construct an exposure risk estimator. The proposed exposure risk estimator has the ability not only to notify users of exposure risks related to their hidden current city but can also help users mitigate exposure risks by overhauling and selecting countermeasures. Moreover, our exposure risk estimator can improve the privacy management of OSNs by facilitating empirical studies on the exposure risks of OSN users as a group. Taking the current city as a case, this work offers insight on how to protect other types of private information against machine-learning prediction attacks and reveals several important implications for both practice management and future research.
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