Label Distribution Learning
Label distribution learning (LDL) addresses the challenge of assigning probabilities to multiple labels for a single data point, moving beyond traditional single-label classification. Current research focuses on improving LDL's robustness to noisy or incomplete label distributions, often employing graph neural networks, adaptive fusion networks, or novel loss functions like Kullback-Leibler divergence to capture label correlations and handle uncertainty. This field is significant because it allows for more nuanced modeling of real-world phenomena where labels are inherently ambiguous or multi-faceted, impacting applications such as facial expression recognition, age estimation, and disease severity prediction.
Papers
September 30, 2022
September 28, 2022
September 21, 2022
September 5, 2022
August 19, 2022
June 14, 2022
April 12, 2022
April 1, 2022
March 31, 2022
March 30, 2022
February 23, 2022