AI RESEARCH

Beyond Loss Values: Robust Dynamic Pruning via Loss Trajectory Alignment

arXiv CS.LG

ArXi:2604.07306v1 Announce Type: cross Existing dynamic data pruning methods often fail under noisy-label settings, as they typically rely on per-sample loss as the ranking criterion. This could mistakenly lead to preserving noisy samples due to their high loss values, resulting in significant performance drop. To address this, we propose AlignPrune, a noise-robust module designed to enhance the reliability of dynamic pruning under label noise. Specifically, AlignPrune