Shapley Additive Explanation
Shapley Additive Explanations (SHAP) is a model-agnostic method used to interpret the predictions of machine learning models by assigning importance scores to individual input features. Current research focuses on improving SHAP's computational efficiency, addressing its sensitivity to data imbalances and feature correlations, and integrating it with various model architectures, including tree-based models, neural networks, and reinforcement learning algorithms, across diverse applications. The widespread adoption of SHAP highlights the growing need for explainable AI, enabling greater trust and understanding of complex models in fields ranging from healthcare and finance to engineering and social sciences.
Papers
November 8, 2023
September 25, 2023
September 5, 2023
July 20, 2023
May 28, 2023
May 3, 2023
March 25, 2023
March 23, 2023
March 9, 2023
February 16, 2023
December 6, 2022
October 7, 2022
September 19, 2022
September 7, 2022
August 18, 2022
August 5, 2022
June 26, 2022
June 24, 2022
June 8, 2022