Task Distribution
Task distribution research focuses on optimizing the selection and sequencing of training tasks to improve the efficiency and generalization of machine learning models, particularly in reinforcement learning and meta-learning. Current research emphasizes generating task distributions that reflect real-world scenarios, leveraging techniques like adversarial training and optimal transport to create robust and adaptable curricula. This work is significant because effective task distribution strategies can dramatically accelerate learning, improve model performance on unseen tasks, and reduce the need for extensive data collection, impacting diverse fields from robotics to natural language processing.
Papers
August 26, 2022
August 19, 2022
June 21, 2022
June 5, 2022
May 22, 2022
February 1, 2022
January 27, 2022