Jump-teaching: Ultra Efficient and Robust Learning with Noisy Label
Jump-teaching: Ultra Efficient and Robust Learning with Noisy Label
Sample selection is the most straightforward technique to combat label noise, aiming to distinguish mislabeled samples during training and avoid the degradation of the robustness of the model. In the workflow, $\textit{selecting possibly clean data}$ and $\textit{model update}$ are iterative. However, their interplay and intrinsic characteristics hinder the robustness and …