Semi Supervised Learning
Semi-supervised learning (SSL) aims to improve machine learning model accuracy by leveraging both limited labeled and abundant unlabeled data. Current research focuses on refining pseudo-labeling techniques to reduce noise and bias in unlabeled data, employing teacher-student models and contrastive learning, and developing novel algorithms to effectively utilize all available unlabeled samples, including those from open sets or with imbalanced class distributions. These advancements are significant because they reduce the reliance on expensive and time-consuming manual labeling, thereby expanding the applicability of machine learning to diverse domains with limited annotated data.
Papers
Joint cortical registration of geometry and function using semi-supervised learning
Jian Li, Greta Tuckute, Evelina Fedorenko, Brian L. Edlow, Bruce Fischl, Adrian V. Dalca
In all LikelihoodS: How to Reliably Select Pseudo-Labeled Data for Self-Training in Semi-Supervised Learning
Julian Rodemann, Christoph Jansen, Georg Schollmeyer, Thomas Augustin