Articles producció científicaEnginyeria Informàtica i Matemàtiques

A consensus privacy metrics framework for synthetic data

  • Identification data

    Identifier:  imarina:9468493
    Authors:  Pilgram, L; Dankar, FK; Drechsler, J; Elliot, M; Domingo-Ferrer, J; Francis, P; Kantarcioglu, M; Kong, LL; Malin, B; Muralidhar, K; Myles, P; Prasser, F; Raisaro, JL; Yan, C; El Emam, K
    Abstract:
    Synthetic data generation is a promising approach for sharing data for secondary purposes in sensitive sectors. However, to meet ethical standards and legislative requirements, it is necessary to demonstrate that the privacy of the individuals upon which the synthetic records are based is adequately protected. Through an expert consensus process, we developed a framework for privacy evaluation in synthetic data. The most commonly used metrics measure similarity between real and synthetic data and are assumed to capture identity disclosure. Our findings indicate that they lack precise interpretation and should be avoided. There was consensus on the importance of membership and attribute disclosure, both of which involve inferring personal information. The framework provides recommendations to effectively measure these types of disclosures, which also apply to differentially private synthetic data if the privacy budget is not close to zero. We further present future research opportunities to support widespread adoption of synthetic data.
  • Others:

    Link to the original source: https://www.sciencedirect.com/science/article/pii/S2666389925001680
    APA: Pilgram, L; Dankar, FK; Drechsler, J; Elliot, M; Domingo-Ferrer, J; Francis, P; Kantarcioglu, M; Kong, LL; Malin, B; Muralidhar, K; Myles, P; Prasser, (2025). A consensus privacy metrics framework for synthetic data. Patterns, 6(10), 101320-. DOI: 10.1016/j.patter.2025.101320
    Paper original source: Patterns. 6 (10): 101320-
    Article's DOI: 10.1016/j.patter.2025.101320
    Journal publication year: 2025-10-10
    Entity: Universitat Rovira i Virgili
    Paper version: info:eu-repo/semantics/publishedVersion
    Record's date: 2026-02-13
    URV's Author/s: Domingo Ferrer, Josep
    Department: Enginyeria Informàtica i Matemàtiques
    Licence document URL: https://repositori.urv.cat/ca/proteccio-de-dades/
    Publication Type: Journal Publications
    Author, as appears in the article.: Pilgram, L; Dankar, FK; Drechsler, J; Elliot, M; Domingo-Ferrer, J; Francis, P; Kantarcioglu, M; Kong, LL; Malin, B; Muralidhar, K; Myles, P; Prasser, F; Raisaro, JL; Yan, C; El Emam, K
    licence for use: https://creativecommons.org/licenses/by/3.0/es/
    Thematic Areas: Decision sciences (miscellaneous), Decision sciences (all), Computer science, interdisciplinary applications, Computer science, information systems, Computer science, artificial intelligence
    Author's mail: josep.domingo@urv.cat
  • Keywords:

    Synthetic data
    Privacy
    Prediction
    Membership disclosure
    Identity disclosure
    Guidelines
    Generative artificial intelligence
    Delphi
    Data sharing
    Criteria
    Attribute disclosure
    Attacks
    Computer Science
    Artificial Intelligence
    Information Systems
    Interdisciplinary Applications
    Decision Sciences (Miscellaneous)
    Decision sciences (all)
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