Generalized Additive Model
Generalized Additive Models (GAMs) are a class of machine learning models designed for both high predictive accuracy and interpretability, particularly valuable when analyzing tabular data. Current research focuses on enhancing GAM performance through novel architectures like neural additive models and incorporating techniques such as in-context learning and sparse regularization to improve efficiency and feature selection. This emphasis on interpretability and improved performance makes GAMs increasingly important for applications requiring transparent decision-making, such as healthcare, finance, and energy forecasting, while also advancing the broader field of explainable AI.
Papers
October 14, 2024
October 8, 2024
October 7, 2024
October 6, 2024
September 25, 2024
September 22, 2024
June 25, 2024
June 3, 2024
May 27, 2024
April 15, 2024
March 17, 2024
February 22, 2024
January 14, 2024
October 24, 2023
September 29, 2023
September 21, 2023
August 15, 2023
August 2, 2023
June 14, 2023
May 19, 2023