[BLC18a] Anonymisation de données par généralisation. Méthode avec guidage

Revue Nationale avec comité de lecture : Journal Ingénierie des Systèmes d'Information, vol. 23/1 - 2018, pp. 63-87, 2018, (doi:10.3166/isi.23.1.63-87)

Mots clés: guidance, security, ontology, methodology, privacy, anonymization, model-driven approach

Résumé: Many algorithms allow data owners to anonymize personal data, aiming at avoiding disclosure risk without losing data utility. In this paper, we describe a model-driven approach guiding the data owner during the anonymization process. The guidance, informative or suggestive, helps the data owner not only in choosing the most relevant algorithm but also in defining the best input values for the algorithm, given the characteristics of data and the context. In this paper, we focus on generalization algorithms for micro-data. We conducted a reverse engineering process in order to extract some knowledge from existing anonymization tools. The knowledge about anonymization, both theoretical and experimental, is managed thanks to an ontology.


@article {
title="{Anonymisation de données par généralisation. Méthode avec guidage}",
author="F. Benfredj and N. Lammari and I. Comyn-Wattiau",
journal="Ingénierie des Systèmes d'Information",
volume=23/1 - 2018,