Publisher DOI: 10.1145/3733155.3733201
Title: Unlearning with partial label learning
Language: English
Authors: Bach, Jörn 
Grohsjean, Alexander 
Schwanenberger, Christian 
Stelldinger, Peer  
Other : Association for Computing Machinery 
Keywords: differential privacy; machine learning; negative quasiprobabilities; partial label learning; unlearning
Issue Date: 17-Jul-2025
Publisher: Association for Computing Machinery
Part of Series: Proceedings of The 18th ACM International Conference on PErvasive Technologies Related to Assistive Environments (PETRA 2025) : June 25– June 27, Corfu, Greece 
Startpage: 175
Endpage: 181
Conference: ACM International Conference on PErvasive Technologies Related to Assistive Environments 2025 
Abstract: 
Machine Unlearning describes the challenge of forgetting data points that were used for an initial training of a machine learning model. Data privacy concerns as well as safety of sensitive learning data are the driving motivation for the emergence of this field. The special case of class unlearning is a challenge, as an entire class is to be unlearned without affecting the accuracy of potentially very similar other classes. We propose a novel method for class unlearning that is robust, efficient and can be applied without having access to the full initial training data. The approach is based on disambiguation-free partial label learning and can be understood as a stabilized version of gradient ascent. Furthermore, we show how this approach can be applied to training data with negative quasiprobabilities which is a problem encountered in high energy physics.
URI: https://hdl.handle.net/20.500.12738/18196
ISBN: 979-8-4007-1402-3
Review status: This version was peer reviewed (peer review)
Institute: Department Informatik 
Fakultät Technik und Informatik 
Type: Chapter/Article (Proceedings)
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