Sampling Control for Imbalanced Calibration in Semi-Supervised Learning
PositiveArtificial Intelligence
- A new framework named SC-SSL has been proposed to address class imbalance in semi-supervised learning (SSL), which often leads to biased classification due to distributional mismatches between labeled and unlabeled data. This framework introduces decoupled sampling control to mitigate feature-level imbalance for minority classes during training and inference phases.
- The development of SC-SSL is significant as it enhances the performance of SSL models by effectively managing sampling probabilities, thereby improving classification accuracy for underrepresented classes. This advancement could lead to more equitable outcomes in various applications of machine learning.
- The introduction of SC-SSL aligns with ongoing efforts in the AI community to tackle challenges related to imbalanced datasets, as seen in other frameworks that focus on unbiased recovery and soft relabeling. These innovations reflect a growing recognition of the importance of addressing data imbalance and bias in machine learning, which is crucial for developing robust and fair AI systems.
— via World Pulse Now AI Editorial System

