Label Distribution
Label distribution learning addresses the challenge of predicting the probability distribution over multiple labels for a single data point, moving beyond traditional single-label classification. Current research focuses on handling skewed or imbalanced label distributions, particularly within federated learning settings, employing techniques like dataset distillation, label masking, and various model adaptations (e.g., logit adjustments, feature augmentation). These advancements are crucial for improving the robustness and accuracy of machine learning models in real-world applications where data is often heterogeneous and noisy, impacting fields like medical image analysis, autonomous driving, and natural language processing.
Papers
August 27, 2022
August 19, 2022
August 13, 2022
August 7, 2022
July 18, 2022
July 13, 2022
May 30, 2022
May 29, 2022
April 27, 2022
April 1, 2022
March 29, 2022
March 16, 2022
February 17, 2022
February 7, 2022