Many software systems, such as online social networks enable users to share information about themselves. While the action of sharing is simple, it requires an elaborate thought process on privacy: what to share, with whom to share, and for what purposes. Thinking about these for each piece of content to be shared is tedious. Recent approaches to tackle this problem build personal assistants that can help users by learning what is private over time and recommending privacy labels such as private or public to individual content that a user considers sharing. However, privacy is inherently ambiguous and highly personal. Existing approaches to recommend privacy decisions do not address these aspects of privacy sufficiently. Ideally, a personal assistant should be able to adjust its recommendation based on a given user, considering that user's privacy understanding. Moreover, the personal assistant should be able to assess when its recommendation would be uncertain and let the user make the decision on her own. Accordingly, this paper proposes a personal assistant that uses evidential deep learning to classify content based on its privacy label. An important characteristic of the personal assistant is that it can model its uncertainty in its decisions explicitly, determine that it does not know the answer, and delegate from making a recommendation when its uncertainty is high. By factoring in the user's own understanding of privacy, such as risk factors or own labels, the personal assistant can personalize its recommendations per user. We evaluate our proposed personal assistant using a well-known data set. Our results show that our personal assistant can accurately identify uncertain cases, personalize them to its user's needs, and thus helps users preserve their privacy well.
翻译:许多软件系统,例如在线社交网络,使用户能够分享关于自身的信息。虽然共享行动很简单,但需要有一个关于隐私的周密思考过程:共享什么,与谁共享,以及为了什么目的。考虑每个内容共享的每个部分都是乏味的。最近解决这一问题的方法可以帮助用户建立个人助理,通过学习隐私随时间推移的隐私,建议隐私标签,例如私人或公共标签,从而帮助用户分享自己的信息。然而,隐私本质上是模糊的,而且高度个人隐私。现有建议隐私决定的方法不能充分解决隐私的这些方面。理想的情况是,个人助理应该能够根据用户对隐私的理解来调整建议。此外,个人助理应该能够评估其建议何时会不确定,让用户自行作出决定。因此,本文件建议个人助理利用显性深的学习,根据用户认为隐私标签对内容进行分类。个人助理的一个重要特征是,可以明确模拟其决定中的不确定性,确定自己不知道答案,并授权他人在用户对隐私的理解基础上调整其建议,因此,在用户的不确定性所在时,个人助理可以评估其个人数据,从而帮助用户对自己的不确定性作出准确评估。