Removing Concepts from Text-to-Image Models with Only Negative Samples

Neural Information Processing Systems 

This work introduces Clipout, a method for removing a target concept in pre-trained text-to-image models. By randomly clipping units from the learned data embedding and using a contrastive objective, models are encouraged to differentiate these clipped embedding vectors.