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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 Marian Pașca, Anca Avram, Oliviu Matei

2025Sensors7 citationsDOIOpen Access PDF

Abstract

The increasing complexity of data ecosystems demands advanced methodologies for systematic privacy risk assessment. This work introduces two complementary metrics-the privacy risk expansion factor (PREF) and the privacy exposure index (PEI)-to evaluate how architectural decisions influence the exposure and distribution of sensitive data. Several representative use cases validate the methodology, demonstrating how the metrics provide structured insights into the privacy impact of distinct design choices. By enabling comparative analysis across architectures, this approach supports the development of privacy-first data ecosystems and lays the groundwork for future research on dynamic, AI-driven risk monitoring.

Topics & Concepts

Vulnerability (computing)Information privacyIndex (typography)Computer securityArchitectureInternet privacyComputer scienceEnvironmental resource managementBusinessEnvironmental scienceWorld Wide WebGeographyArchaeologyPrivacy-Preserving Technologies in DataPrivacy, Security, and Data ProtectionMobile Crowdsensing and Crowdsourcing
Privacy-Conducive Data Ecosystem Architecture: By-Design Vulnerability Assessment Using Privacy Risk Expansion Factor and Privacy Exposure Index | Litcius