基于模式的隐私系统如何提高上下文识别

Christoph Stach, Frank Dürr, K. Mindermann, S. Palanisamy, Stefan Wagner
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引用次数: 16

摘要

由于智能设备可以访问大量用户偏好的数据,因此它们在任何情况下都会派上用场。尽管这些数据——以及可以从中获得的知识——是非常有益的,因为应用程序能够根据各自的环境调整其服务,但它也构成了隐私威胁。因此,人们对隐私进行了大量的研究工作。然而,所有的方法都模糊了某些属性,这对上下文识别产生了负面影响,从而影响了服务质量。因此,我们引入了一种新的访问控制机制,称为PATRON。其基本思想是控制对信息模式的访问。例如,一个患有糖尿病的人可能不想暴露他或她不健康的饮食习惯,这可能源于“血糖水平升高”“增加面包单位”的模式。这种不能被某些方(如保险公司)发现的模式被称为私有模式,而提高应用程序服务质量的模式被标记为公共模式。PATRON采用不同的技术来隐藏私有模式,在可用的备选方案中,选择对服务质量负面影响最小的方案,从而尽可能地支持对公共模式的识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How a Pattern-based Privacy System Contributes to Improve Context Recognition
As Smart Devices have access to a lot of user-preferential data, they come in handy in any situation. Although such data—as well as the knowledge which can be derived from it—is highly beneficial as apps are able to adapt their services appropriate to the respective context, it also poses a privacy threat. Thus, a lot of research work is done regarding privacy. Yet, all approaches obfuscate certain attributes which has a negative impact on context recognition and thus service quality. Therefore, we introduce a novel access control mechanism called PATRON. The basic idea is to control access to information patterns. For instance, a person suffering from diabetes might not want to reveal his or her unhealthy eating habit, which can be derived from the pattern “rising blood sugar level” “adding bread units”. Such a pattern which must not be discoverable by some parties (e. g., insurance companies) is called private pattern whereas a pattern which improves an app's service quality is labeled as public pattern. PATRON employs different techniques to conceal private patterns and, in case of available alternatives, selects the one with the least negative impact on service quality, such that the recognition of public patterns is supported as good as possible.
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