Shannon Entropy
Shannon entropy, a measure of uncertainty or randomness in a system, is a fundamental concept in information theory with applications across diverse scientific fields. Current research focuses on leveraging entropy to improve machine learning models, including enhancing model interpretability, optimizing training processes (e.g., through pruning and adaptive exploration-exploitation strategies), and improving robustness and generalization. This involves applying entropy-based metrics to analyze model behavior, guide data selection, and develop novel algorithms for tasks ranging from image classification to reinforcement learning, ultimately leading to more efficient and reliable AI systems.
Papers
April 17, 2024
March 4, 2024
December 19, 2023
December 10, 2023
October 27, 2023
October 11, 2023
September 19, 2023
September 18, 2023
September 1, 2023
August 12, 2023
July 20, 2023
May 12, 2023
May 2, 2023
April 25, 2023
March 4, 2023
February 10, 2023
January 22, 2023
October 4, 2022