Learning Privacy Preferences

Inger Anne Tøndel, Åsmund Ahlmann Nyre, K. Bernsmed
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引用次数: 12

Abstract

This paper suggests a machine learning approach to preference generation in the context of privacy agents. With this solution, users are relieved from the complex task of specifying their preferences beforehand, disconnected from actual situations. Instead, historical privacy decisions are used as a basis for providing privacy recommendations to users in new situations. The solution also takes into account the reasons why users act as they do, and allows users to benefit from information on the privacy trade-offs made by others.
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学习隐私偏好
本文提出了一种基于机器学习的隐私代理偏好生成方法。有了这个解决方案,用户可以从事先指定他们的偏好的复杂任务中解脱出来,脱离实际情况。相反,历史隐私决策被用作在新情况下向用户提供隐私建议的基础。该解决方案还考虑了用户行为的原因,并允许用户从其他人所做的隐私权衡信息中受益。
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