Symbolic Learning
Symbolic learning aims to integrate the power of symbolic reasoning with the data-driven capabilities of machine learning, primarily to improve model interpretability, efficiency, and robustness. Current research focuses on developing neuro-symbolic architectures that combine neural networks with symbolic representations (e.g., logic programs, rule sets) and algorithms like symbolic regression, expectation maximization, and meta-learning to learn and optimize these combined models. This approach holds significant promise for advancing various fields, including materials discovery, financial modeling, and misinformation detection, by enabling the creation of more explainable, efficient, and reliable AI systems.
Papers
November 7, 2024
October 21, 2024
August 16, 2024
June 26, 2024
June 11, 2024
May 3, 2024
April 17, 2024
March 25, 2024
February 25, 2024
February 6, 2024
January 29, 2024
December 17, 2023
November 30, 2023
October 8, 2023
September 12, 2023
July 2, 2023
May 26, 2023
April 18, 2023