An applied Perspective: Estimating the Differential Identifiability Risk of an Exemplary SOEP Data Set

Research output: Contribution to conferencesPaperContributedpeer-review

Contributors

  • Jonas Allmann - , Technical University of Berlin (Author)
  • Saskia Nuñez von Voigt - , Technical University of Berlin (Author)
  • Florian Tschorsch - , Chair of Privacy and Data Security (Author)

Abstract

Using real-world study data usually requires contractual agreements where research results may only be published in anonymized form. Requiring formal privacy guarantees, such as differential privacy, could be helpful for data-driven projects to comply with data protection. However, deploying differential privacy in consumer use cases raises the need to explain its underlying mechanisms and the resulting privacy guarantees. In this paper, we thoroughly review and extend an existing privacy metric. We show how to compute this risk metric efficiently for a set of basic statistical queries. Our empirical analysis based on an extensive, real-world scientific data set expands the knowledge on how to compute risks under realistic conditions, while presenting more challenges than solutions.

Details

Original languageEnglish
Pages48-55
Number of pages8
Publication statusPublished - 2024
Peer-reviewedYes

Conference

Title9th IEEE European Symposium on Security and Privacy
Abbreviated titleEuroS&P 2024
Conference number9
Duration8 - 12 July 2024
Website
LocationUniversität Wien
CityWien
CountryAustria

External IDs

Scopus 85203000007