Anonymization and Identifiability
Enhancing Data Protection Through Differential Privacy and Artificial Intelligence
Von:
Gerlach, Lauritz
The author explores the nature of data anonymization under the GDPR, with a particular focus on means of differential privacy. First, he examines the requirement of "identified or identifiable" in Art. 4 GDPR. Building on this foundation, he describes and evaluates different methods for the anonymization of structured and unstructured data, especially text data. The author describes the role of machine learning and artificial intelligence with regard to anonymizing unstructured data and elaborates on the data protection implications of training and using AI/ML models (including federated learning setups) for this purpose.
Februar 2026, ca. 264 Seiten, Global and Comparative Data Law, Bd. 08, Englisch
De Gruyter
978-3-11-914260-1
De Gruyter
978-3-11-914260-1

