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Machine unlearning: linear filtration for logit-based classifiers

Thomas Baumhauer, Pascal Schöttle, Matthias Zeppelzauer

2022Machine Learning97 citationsDOIOpen Access PDF

Abstract

Abstract Recently enacted legislation grants individuals certain rights to decide in what fashion their personal data may be used and in particular a “right to be forgotten”. This poses a challenge to machine learning: how to proceed when an individual retracts permission to use data which has been part of the training process of a model? From this question emerges the field of machine unlearning , which could be broadly described as the investigation of how to “delete training data from models”. Our work complements this direction of research for the specific setting of class-wide deletion requests for classification models (e.g. deep neural networks). As a first step, we propose linear filtration as an intuitive, computationally efficient sanitization method. Our experiments demonstrate benefits in an adversarial setting over naive deletion schemes.

Topics & Concepts

Computer scienceMachine learningArtificial intelligenceLogitField (mathematics)Process (computing)PermissionClass (philosophy)Artificial neural networkAdversarial systemTraining setMathematicsLawPure mathematicsPolitical scienceOperating systemPrivacy-Preserving Technologies in DataAdversarial Robustness in Machine LearningEthics and Social Impacts of AI