LEGATO: Good Identity Unlearning Is Continuous
arXiv:2601.04282v1 Announce Type: new Abstract: Machine unlearning has become a crucial role in enabling generative models trained on large datasets to remove sensitive, private, or copyright-protected data. However, existing machine unlearning methods face three challenges in learning to forget identity of generative models: 1) inefficient, where identity erasure requires fine-tuning all the model’s parameters; 2) limited controllability, where forgetting intensity cannot be controlled and explainability is lacking; 3) catastrophic collapse, where the model’s retention capability undergoes drastic degradation […]