Privacy-Conducive Data Ecosystem Architecture: By-Design Vulnerability Assessment Using Privacy Risk Expansion Factor and Privacy Exposure Index

Publications

Privacy-Conducive Data Ecosystem Architecture: By-Design Vulnerability Assessment Using Privacy Risk Expansion Factor and Privacy Exposure Index

Privacy-Conducive Data Ecosystem Architecture: By-Design Vulnerability Assessment Using Privacy Risk Expansion Factor and Privacy Exposure Index
Ionela Chereja, Rudolf Erdei, Daniela Delinschi, Emil Pasca, Anca Avram, Oliviu Matei

Abstract. Modern data ecosystems integrate heterogeneous sources, processing layers and stakeholders, making the by-design assessment of privacy vulnerabilities particularly challenging. This paper proposes a Privacy-Conducive Data Ecosystem Architecture that supports by-design vulnerability assessment using two novel metrics: the Privacy Risk Expansion Factor and the Privacy Exposure Index. The expansion factor quantifies how privacy risks propagate through different architectural layers and integration points, while the exposure index aggregates these risks into a single, interpretable score. The architecture and metrics are validated on representative IoT and smart agriculture scenarios, demonstrating their usefulness for designing ecosystems that are inherently more privacy-respectful.

Keywords: privacy by design; data ecosystem; vulnerability assessment; privacy risk; IoT; smart agriculture

📋 Cite this publication



Ionela Chereja, Rudolf Erdei, Daniela Delinschi, Emil Pasca, Anca Avram, Oliviu Matei, "Privacy-Conducive Data Ecosystem Architecture: By-Design Vulnerability Assessment Using Privacy Risk Expansion Factor and Privacy Exposure Index", Sensors (Basel), vol. 25, no. 11, MDPI, 2025, 2023. DOI: https://doi.org/10.3390/s25113554.


Reference: Sensors (Basel), vol. 25, no. 11, MDPI, 2025. DOI: 10.3390/s25113554

Guide in Designing an Asynchronous Performance-Centric Framework for Heterogeneous Microservices in Time-Critical Cybersecurity Applications. The BIECO Use Case

Guide in Designing an Asynchronous Performance-Centric Framework for Heterogeneous Microservices in Time-Critical Cybersecurity Applications. The BIECO Use Case

The generalized traveling salesman problem (GTSP) is an extension of the classical traveling salesman
problem (TSP), and it is among the most researched combinatorial optimization problems due to its theoretical properties, complexity aspects, and real-life applications in various areas: location-routing problems, material flow design problem, distribution of medical supplies, urban waste collection management, airport selection and routing the courier airplanes, image retrieval and ranking, digital garment manufacturing, etc.

read more
Trend-Enabled Recommender System with Diversity Enhancer for Crop Recommendation

Trend-Enabled Recommender System with Diversity Enhancer for Crop Recommendation

The generalized traveling salesman problem (GTSP) is an extension of the classical traveling salesman
problem (TSP), and it is among the most researched combinatorial optimization problems due to its theoretical properties, complexity aspects, and real-life applications in various areas: location-routing problems, material flow design problem, distribution of medical supplies, urban waste collection management, airport selection and routing the courier airplanes, image retrieval and ranking, digital garment manufacturing, etc.

read more

Other publications

0 Comments