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Machine unlearning: linear filtration for logit-based classifiers.

Thomas BaumhauerPascal SchöttleMatthias Zeppelzauer
Published in: Machine learning (2022)
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.
Keyphrases
  • machine learning
  • neural network
  • big data
  • deep learning
  • electronic health record
  • artificial intelligence
  • virtual reality
  • hiv infected