Learning without Looking: Similarity Preserving Hashing and Its Potential for Machine Learning in Privacy Critical Domains

Autor(en): Eleks, M.
Rebstadt, J.
Fukas, P.
Thomas, O. 
Herausgeber: Demmler, D.
Krupka, D.
Federrath, H.
Stichwörter: Data Anonymization; Design; Design-science researches; Fuzzy Hashing; Knowledge based systems; Learning algorithms; Machine Learning; Machine-learning; Privacy aware; Privacy Aware Machine Learning; Sensitive data, Critical domain; Similarity preserving; Similarity Preserving Hashing; Similarity preserving hashing, Machine learning
Erscheinungsdatum: 2022
Herausgeber: Gesellschaft fur Informatik (GI)
Journal: Lecture Notes in Informatics (LNI), Proceedings - Series of the Gesellschaft fur Informatik (GI)
Volumen: P-326
Startseite: 161
Seitenende: 177
Zusammenfassung: 
Machine Learning is frequently ranked as one of the most promising technologies in several application domains but falls short when the data necessary for training is privacy-sensitive and can thus not be used. We address this problem by extending the field of Privacy Aware Machine Learning with the application of Similarity Preserving Hashing algorithms to the task of data anonymization in a Design Science Research approach. In this endeavor, novel anonymization algorithms made to enable Machine Learning on anonymized data are designed, implemented, and evaluated. Throughout the Design Science Research process, we present a collection of issues and requirements for Privacy Aware Machine Learning algorithms along with three Similarity Preserving Hashing-based algorithms to fulfil them. A metric-based comparison of established and novel algorithms as well as new arising opportunities for Machine Learning on sensitive data are also added to the current knowledge base of Information Systems research. © 2022 Gesellschaft fur Informatik (GI). All rights reserved.
Beschreibung: 
Conference of 2022 Informatik in den Naturwissenschaften, INFORMATIK 2022 - 2022 Computer Science in the Natural Sciences, INFORMATIK 2022 ; Conference Date: 26 September 2022 Through 30 September 2022; Conference Code:183150
ISBN: 9783885797203
ISSN: 1617-5468
DOI: 10.18420/inf2022_16
Externe URL: https://www.scopus.com/inward/record.uri?eid=2-s2.0-85139753529&doi=10.18420%2finf2022_16&partnerID=40&md5=7aa62104b46fb2c2dae1504568b1d0dd

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