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'When and Where Do You Want to Hide?' — Recommendation of Location Privacy Preferences with Local Differential Privacy

机译:“你想何时何地隐藏?” - 与当地差异隐私的位置隐私偏好的建议

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In recent years, it has become easy to obtain location information quite precisely. However, the acquisition of such information has risks such as individual identification and leakage of sensitive information, so it is necessary to protect the privacy of location information. For this purpose, people should know their location privacy preferences, that is, whether or not he/she can release location information at each place and time. However, it is not easy for each user to make such decisions and it is troublesome to set the privacy preference at each time. Therefore, we propose a method to recommend location privacy preferences for decision making. Comparing to existing method, our method can improve the accuracy of recommendation by using matrix factorization and preserve privacy strictly by local differential privacy, whereas the existing method does not achieve formal privacy guarantee. In addition, we found the best granularity of a location privacy preference, that is, how to express the information in location privacy protection. To evaluate and verify the utility of our method, we have integrated two existing datasets to create a rich information in term of user number. From the results of the evaluation using this dataset, we confirmed that our method can predict location privacy preferences accurately and that it provides a suitable method to define the location privacy preference.
机译:近年来,它变得容易获得定位信息。但是,收购此类信息具有诸如个人识别和敏感信息的泄漏等风险,因此有必要保护地点信息的隐私。为此目的,人们应该了解他们的位置隐私偏好,即他/她是否可以在每个地方和时间发布位置信息。但是,每个用户都不容易做出这样的决策,并且每次设置隐私偏好都很麻烦。因此,我们提出了一种推荐定位隐私偏好的方法来决策。与现有方法相比,我们的方法可以通过使用矩阵分解并严格通过当地差异隐私来提高推荐的准确性,而现有方法没有实现正式隐私保障。此外,我们发现位置隐私偏好的最佳粒度,即如何在位置隐私保护中表达信息。要评估和验证我们方法的实用程序,我们已集成了两个现有数据集,以在用户编号的任期内创建丰富的信息。通过使用此数据集的评估结果,我们确认我们的方法可以准确地预测位置隐私偏好,并且它提供了定义位置隐私偏好的合适方法。

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