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Cloak and Swagger: Understanding Data Sensitivity through the Lens of User Anonymity

机译:斗篷和招摇:通过用户匿名的角度了解数据敏感性

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Most of what we understand about data sensitivity is through user self-report (e.g., surveys), this paper is the first to use behavioral data to determine content sensitivity, via the clues that users give as to what information they consider private or sensitive through their use of privacy enhancing product features. We perform a large-scale analysis of user anonymity choices during their activity on Quora, a popular question-and-answer site. We identify categories of questions for which users are more likely to exercise anonymity and explore several machine learning approaches towards predicting whether a particular answer will be written anonymously. Our findings validate the viability of the proposed approach towards an automatic assessment of data sensitivity, show that data sensitivity is a nuanced measure that should be viewed on a continuum rather than as a binary concept, and advance the idea that machine learning over behavioral data can be effectively used in order to develop product features that can help keep users safe.
机译:我们对数据敏感性的大部分了解是通过用户的自我报告(例如调查),本文是第一篇使用行为数据来确定内容敏感性的方法,它是通过用户提供有关他们认为哪些信息属于私人或敏感信息的线索他们使用增强隐私的产品功能。在用户在热门问答网站Quora上的活动期间,我们会对用户的匿名选择进行大规模分析。我们确定用户更可能行使匿名性的问题类别,并探索几种机器学习方法来预测特定答案是否将以匿名方式编写。我们的发现验证了所提出的方法对数据敏感度自动评估的可行性,表明数据敏感度是一种细微的度量,应该在一个连续统上而不是一个二元概念上进行观察,并且推进了机器学习可以超越行为数据的思想有效地使用以开发可帮助确保用户安全的产品功能。

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