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Towards an Identity-Based Data Model for an Automotive Privacy Process

机译:建立用于汽车隐私流程的基于身份的数据模型

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摘要

Information technology has attracted considerable attention in modern automobiles for their promise of value-added services. Based on increasing connectivity and seamless integration of advanced functionality into vehicles, a new challenge is the development of holistic and standardized privacy approaches. So far, privacy has often been considered as a singular task, neglecting the impact of a holistic viewpoint on automotive data. In this paper we provide an identity-based data model, a way to define a structured and flexible view to the acquired vehicular data, i.e., identifying information. We develop the data model as a graph, provide a formal notation and demonstrate its application with an example. The proposed scheme of the model is of multiple uses and the formal notation shows to serve additional privacy features to our model, e.g., privacy risk assessment.
机译:信息技术因其提供增值服务的承诺而在现代汽车中引起了相当大的关注。基于不断增强的连接性以及将高级功能无缝集成到车辆中,新的挑战是开发整体和标准化的隐私方法。到目前为止,隐私通常被视为一项艰巨的任务,而忽略了整体观点对汽车数据的影响。在本文中,我们提供了基于身份的数据模型,这是一种为获取的车辆数据(即识别信息)定义结构化且灵活的视图的方法。我们将数据模型开发为图形,提供正式的注释并通过示例演示其应用。该模型的建议方案具有多种用途,并且正式的符号表示可以为我们的模型提供其他隐私功能,例如,隐私风险评估。

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