Learning With Error
Learning with error focuses on improving machine learning models by leveraging errors during the learning process, aiming to enhance accuracy and efficiency. Current research emphasizes methods like error-driven learning, in-context learning analysis, and the application of large language models (LLMs) and other neural network architectures to analyze and correct errors in various domains, including education, robotics, and code generation. These advancements hold significant potential for improving model performance across diverse applications and offer insights into the fundamental mechanisms of human and artificial learning.
Papers
October 21, 2024
October 11, 2024
September 14, 2024
September 5, 2024
June 30, 2024
June 26, 2024
March 29, 2024
February 29, 2024
February 20, 2024
February 19, 2024
October 31, 2023
May 30, 2023
March 7, 2023
March 5, 2023
February 26, 2023
February 14, 2023
July 8, 2022
July 6, 2022
June 24, 2022