Articles producció científicaEnginyeria Informàtica i Matemàtiques

Evaluating the disclosure risk of anonymized documents via a machine learning-based re-identification attack

  • Dades identificatives

    Identificador:  imarina:9385341
    Autors:  Manzanares-Salor, Benet; Sanchez, David; Lison, Pierre
    Resum:
    The availability of textual data depicting human-centered features and behaviors is crucial for many data mining and machine learning tasks. However, data containing personal information should be anonymized prior making them available for secondary use. A variety of text anonymization methods have been proposed in the last years, which are standardly evaluated by comparing their outputs with human-based anonymizations. The residual disclosure risk is estimated with the recall metric, which quantifies the proportion of manually annotated re-identifying terms successfully detected by the anonymization algorithm. Nevertheless, recall is not a risk metric, which leads to several drawbacks. First, it requires a unique ground truth, and this does not hold for text anonymization, where several masking choices could be equally valid to prevent re-identification. Second, it relies on human judgements, which are inherently subjective and prone to errors. Finally, the recall metric weights terms uniformly, thereby ignoring the fact that the influence on the disclosure risk of some missed terms may be much larger than of others. To overcome these drawbacks, in this paper we propose a novel method to evaluate the disclosure risk of anonymized texts by means of an automated re-identification attack. We formalize the attack as a multi-class classification task and leverage state-of-the-art neural language models to aggregate the data sources that attackers may use to build the classifier. We illustrate the effectiveness of our method by assessing the disclosure risk of several methods for text anonymization under different attack configurations. Empirical results show substantial privacy risks for most existing anonymization methods.
  • Altres:

    Enllaç font original: https://link.springer.com/article/10.1007/s10618-024-01066-3
    Referència de l'ítem segons les normes APA: Manzanares-Salor, Benet; Sanchez, David; Lison, Pierre (2024). Evaluating the disclosure risk of anonymized documents via a machine learning-based re-identification attack. Data Mining And Knowledge Discovery, 38(6), 4040-4075. DOI: 10.1007/s10618-024-01066-3
    Referència a l'article segons font original: Data Mining And Knowledge Discovery. 38 (6): 4040-4075
    DOI de l'article: 10.1007/s10618-024-01066-3
    Any de publicació de la revista: 2024
    Entitat: Universitat Rovira i Virgili
    Versió de l'article dipositat: info:eu-repo/semantics/publishedVersion
    Data d'alta del registre: 2025-03-15
    Autor/s de la URV: Manzanares Salor, Benet / Sánchez Ruenes, David
    Departament: Enginyeria Informàtica i Matemàtiques
    URL Document de llicència: https://repositori.urv.cat/ca/proteccio-de-dades/
    Tipus de publicació: Journal Publications
    Autor segons l'article: Manzanares-Salor, Benet; Sanchez, David; Lison, Pierre
    Accès a la llicència d'ús: https://creativecommons.org/licenses/by/3.0/es/
    Àrees temàtiques: Information systems, Engenharias iv, Engenharias iii, Computer science, information systems, Computer science, artificial intelligence, Computer science applications, Computer networks and communications, Ciências biológicas i, Ciência da computação
    Adreça de correu electrònic de l'autor: benet.manzanares@urv.cat, david.sanchez@urv.cat
  • Paraules clau:

    Text anonymization
    Record linkage
    Re-identification risk
    Privacy-preserving data publishing
    Privac
    Language models
    Language model
    De-identification
    Computer Networks and Communications
    Computer Science Applications
    Computer Science
    Artificial Intelligence
    Information Systems
    Engenharias iv
    Engenharias iii
    Ciências biológicas i
    Ciência da computação
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