Abstract-While the general concept of "Privacy-by-Design (PbD)" is increasingly a popular one, there is considerable paucity of either rigorous or quantitative underpinnings supporting PbD. Drawing upon privacy-aware modeling techniques, this paper proposes a quantitative threat modeling methodology (QTMM) that can be used to draw objective conclusions about different privacy-related attacks that might compromise a service. The proposed QTMM has been empirically validated in the context of the EU project ABC4Trust, where the end-users actually elicited security and privacy requirements of the socalled privacy-Attribute Based Credentials (privacy-ABCs) in a real-world scenario. Our overall objective, is to provide architects of privacy-respecting systems with a set of quantitative and automated tools to help decide across functional system requirements and the corresponding trade-offs (security, privacy and economic), that should be taken into account before the actual deployment of their services.
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