Abstract
Privacy policies are often used to fulfill the requirement of transparency of data protection legislation like the General Data Protection Regulation of the European Union. The privacy policies are used to describe how the data subject’s data are handled by the data controller. Domain and legal experts mostly create these policies manually. We propose a tool-supported method to improve the creation of accurate privacy policies based on information from the development phase of a system. During privacy and security threat analyses information about system behavior is collected in form of data-flow diagrams. These diagrams describe which data flows from where to where within the system and to which external actors.
Based on this data-flow information we can create the basic structure of a privacy policy, already containing the data-flows. The extracted information is one of the most important parts of a privacy policy, providing transparency when data is transferred to external parties.
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The Unified Modeling Language: https://www.omg.org/spec/UML/.
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Acknowledgement
We thank Julien Lukasewycz for his useful input during the development of our approach, as well as writing this paper. We further thank the reviewers of this paper for their valuable input regarding the paper itself as well as the approach we presented.
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Leicht, J., Wagner, M., Heisel, M. (2024). Creating Privacy Policies from Data-Flow Diagrams. In: Katsikas, S., et al. Computer Security. ESORICS 2023 International Workshops. ESORICS 2023. Lecture Notes in Computer Science, vol 14398. Springer, Cham. https://doi.org/10.1007/978-3-031-54204-6_26
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