Overview of black-box forgetting (IMAGE)
Caption
Selective forgetting aims to reduce the classification accuracy for classes to be forgotten while maintaining the accuracy for the classes to be remembered. The proposed method, which targets the image classifier model CLIP, achieves selective forgetting by optimizing the input text prompt, since the model itself is a ‘black box.’
Credit
Go Irie from Tokyo University of Science
Usage Restrictions
Credit must be given to the creator.
License
Original content