Robust Learning
Robust learning aims to develop machine learning models that are resilient to various forms of noise and uncertainty in data, including label noise, adversarial attacks, and distribution shifts. Current research focuses on developing algorithms and model architectures (e.g., multiview SVMs, graph neural networks, and diffusion models) that incorporate techniques like adversarial training, data augmentation, and loss function modifications to enhance robustness. These advancements are crucial for improving the reliability and generalizability of machine learning models in real-world applications, particularly in safety-critical domains like healthcare and autonomous systems, where data imperfections are common.
Papers
February 2, 2023
January 30, 2023
January 29, 2023
January 18, 2023
December 16, 2022
November 29, 2022
November 22, 2022
November 1, 2022
October 27, 2022
October 21, 2022
October 13, 2022
October 12, 2022
October 10, 2022
October 6, 2022
October 2, 2022
September 15, 2022
September 12, 2022
September 5, 2022