Free Learning
Free learning, encompassing data-free and model-free approaches, aims to train machine learning models without relying on large labeled datasets or explicit model specifications. Current research focuses on developing techniques like diffusion models, deep neural networks, and contrastive learning to generate synthetic data or learn directly from system interactions, often employing reinforcement learning or policy gradient methods. This field is significant for its potential to reduce the high cost and effort associated with data acquisition and annotation, enabling efficient model training in resource-constrained scenarios and facilitating applications in areas like healthcare, robotics, and autonomous systems.
Papers
October 30, 2024
October 16, 2024
September 3, 2024
August 18, 2024
July 7, 2024
May 22, 2024
April 18, 2024
January 25, 2024
December 16, 2023
November 27, 2023
July 10, 2023
May 5, 2023
April 24, 2023
March 14, 2023
February 25, 2023
January 27, 2023
January 13, 2023
September 8, 2022
July 12, 2022