Learning Dynamic
Learning dynamics research investigates how models evolve during training, aiming to understand and optimize the process of acquiring knowledge and skills. Current efforts focus on characterizing learning trajectories across various model architectures, including neural networks (both deep and shallow), and algorithms like stochastic gradient descent, analyzing the influence of hyperparameters and initialization strategies on performance and stability. This research is crucial for improving model efficiency, generalization, and robustness in diverse applications, from robotics and reinforcement learning to understanding fundamental aspects of neural network behavior and biological learning.
Papers
November 12, 2024
November 7, 2024
October 6, 2024
September 24, 2024
September 23, 2024
September 22, 2024
September 15, 2024
September 7, 2024
September 5, 2024
August 22, 2024
August 20, 2024
July 15, 2024
July 14, 2024
July 10, 2024
June 27, 2024
June 25, 2024
June 5, 2024