LiBaGS: Lightweight Boundary Gap Synthesis for Targeted Synthetic Data Selection
arXiv:2605.11231v2 Announce Type: replace-cross
Abstract: Synthetic data is useful only when the added samples fill missing parts of the training distribution that matter for the downstream task. We introduce LiBaGS, a lightweight, generator-agnostic …