Section 01
RePAIR: Interactive Machine Unlearning, Empowering Users to Control the Knowledge Boundaries of Large Models (Introduction)
This article introduces the RePAIR framework and proposes a new paradigm of Interactive Machine Unlearning (IMU). Users can instruct the model to forget specific knowledge during inference via natural language commands. The core STAMP method guides MLP activations to a rejection subspace through pseudoinverse updates, enabling efficient, on-device knowledge deletion without retraining. This solves the selective unlearning challenge for large models and returns data control to users.