Artikel in Tagungsband INPROC-2020-03

Bibliograph.
Daten
Stach, Christoph; Giebler, Corinna; Wagner, Manuela; Weber, Christian; Mitschang, Bernhard: AMNESIA: A Technical Solution towards GDPR-compliant Machine Learning.
In: Furnell, Steven (Hrsg); Mori, Paolo (Hrsg); Weippl, Edgar (Hrsg); Camp, Olivier (Hrsg): Proceedings of the 6th International Conference on Information Systems Security and Privacy (ICISSP 2020).
Universität Stuttgart, Fakultät Informatik, Elektrotechnik und Informationstechnik.
S. 1-12, englisch.
Valletta, Malta: SciTePress, Februar 2020.
Artikel in Tagungsband (Konferenz-Beitrag).
KörperschaftINSTICC
CR-Klassif.K.4.1 (Computers and Society Public Policy Issues)
I.5.1 (Pattern Recognition Models)
KeywordsMachine Learning; Data Protection; Privacy Zones; Access Control; Model Management; Provenance; GDPR
Kurzfassung

Machine Learning (ML) applications are becoming increasingly valuable due to the rise of IoT technologies. That is, sensors continuously gather data from different domains and make them available to ML for learning its models. This provides profound insights into the data and enables predictions about future trends. While ML has many advantages, it also represents an immense privacy risk. Data protection regulations such as the GDPR address such privacy concerns, but practical solutions for the technical enforcement of these laws are also required. Therefore, we introduce AMNESIA, a privacy-aware machine learning model provisioning platform. AMNESIA is a holistic approach covering all stages from data acquisition to model provisioning. This enables to control which application may use which data for ML as well as to make models "forget" certain knowledge.

KontaktSenden Sie eine E-Mail an Christoph.Stach@ipvs.uni-stuttgart.de
Abteilung(en)Universität Stuttgart, Institut für Parallele und Verteilte Systeme, Anwendersoftware
Eingabedatum19. Dezember 2019
   Publ. Institut   Publ. Informatik