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Linking Legal and Domain-specific Requirements in a Context-based Adaptive Personalized Learning Environment

机译:在基于上下文的自适应个性化学习环境中链接合法和域的特定要求

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In the digital age, privacy is an asset that is worth being protected. It gives users the opportunity to decide what he or she wants to reveal to others about themselves. Although privacy is legally protected, e.g. by the General Data Protection Regulation (GDPR) when processing personal data, users often have no freedom to decide which data is collected and processed for what purpose and to what extent. Usually, systems only support an all-or-nothing approach. To give users back a more fine-grained control over their privacy, it is necessary to selectively approve the data for related functionalities. This addresses the requirements to data minimization. A consent of processing personal data should consider personal preferences and must be withdrawn at any time. The consequences of a consent or a withdrawal should be explained to users. In this paper we present an approach to address the above challenges. Our approach enables us to support I) specific and in-situ explanations of data processing to the users on request and II) in-situ opportunities to make fine-grained decisions about the data usage. For that, we use a context-based adaptive learning environment and a specific domain model. This domain model is used by domain experts that are capable of concerning content, legal and technical requirements equally and that know what is relevant for specific learning resp. collaboration situations. They define related content, legal and technical policies that must be considered at runtime. We illustrated how we use our approach to give users back fine-grained control over their privacy and data, by enabling them to selectively approve the data for related functionalities at hand.
机译:在数字时代,隐私是值得保护的资产。它让用户有机会决定他或她想向别人透露自己。虽然隐私是法律保护的,但例如,通过一般数据保护规则(GDPR)处理个人数据时,用户通常没有自由来决定哪些数据被收集和处理到什么目的和在多大程度上。通常,系统仅支持全部或无所作为的方法。为用户提供更细粒度的隐私控制,有必要选择性地批准相关功能的数据。这解决了数据最小化的要求。处理个人数据的同意应考虑个人偏好,并且必须随时撤回。应向用户解释同意或提款的后果。在本文中,我们提出了一种解决上述挑战的方法。我们的方法使我们能够支持i)对用户的数据处理的特定和原位解释,II)原位机会对数据使用进行细粒度决策。为此,我们使用基于上下文的自适应学习环境和特定的域模型。该域模型由域专家使用,该域专家能够同样有关内容,法律和技术要求,并且知道与特定学习相关的内容。协作情况。他们定义了在运行时必须考虑的相关内容,法律和技术政策。我们说明了如何使用我们的方法来使用户通过使他们能够选择性地批准手头相关功能的数据来对其隐私和数据进行微粒控制。

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