Langevin Unlearning: A New Perspective of Noisy Gradient Descent for Machine Unlearning
–Neural Information Processing Systems
Machine unlearning has raised significant interest with the adoption of laws ensuring the ``right to be forgotten''. Researchers have provided a probabilistic notion of approximate unlearning under a similar definition of Differential Privacy (DP), where privacy is defined as statistical indistinguishability to retraining from scratch. We propose Langevin unlearning, an unlearning framework based on noisy gradient descent with privacy guarantees for approximate unlearning problems.
Neural Information Processing Systems
Dec-26-2025, 14:27:57 GMT