Label Shift
Label shift, a type of dataset shift, occurs when the distribution of labels changes between training and testing data, while the relationship between features and labels remains consistent. Current research focuses on developing methods to estimate and correct for this shift, employing techniques like importance weighting, kernel methods, and adaptation modules integrated into existing deep learning architectures. Addressing label shift is crucial for improving the reliability and robustness of machine learning models in real-world applications where data distributions inevitably change over time or across domains, impacting model performance and generalization.
Papers
February 6, 2023
February 5, 2023
December 21, 2022
December 12, 2022
December 1, 2022
November 28, 2022
November 16, 2022
November 7, 2022
October 18, 2022
September 18, 2022
July 26, 2022
July 5, 2022
July 2, 2022
July 1, 2022
May 26, 2022
April 12, 2022
March 23, 2022