Coreset Selection for Efficient and Robust Semi-Supervised Learning
–Neural Information Processing Systems
Semi-supervised learning (SSL) algorithms have had great success in recent years in limited labeled data regimes. However, the current state-of-the-art SSL algorithms are computationally expensive and entail significant compute time and energy requirements. This can prove to be a huge limitation for many smaller companies and academic groups. Our main insight is that training on a subset of unlabeled data instead of entire unlabeled data enables the current SSL algorithms to converge faster, significantly reducing computational costs.
Neural Information Processing Systems
May-29-2025, 05:52:57 GMT