Model Agnostic
Model-agnostic methods in machine learning aim to develop techniques applicable across diverse model architectures, improving generalizability and reducing reliance on specific algorithms. Current research focuses on enhancing explainability, uncertainty quantification, and efficient resource utilization across various applications, including image generation, robotics, and natural language processing, often employing techniques like surrogate models, counterfactual analysis, and feature manipulation. This approach is significant because it promotes broader applicability, facilitates comparisons between different models, and ultimately leads to more robust and trustworthy AI systems across a wider range of domains.
Papers
July 25, 2023
July 24, 2023
June 28, 2023
June 1, 2023
May 30, 2023
May 29, 2023
May 25, 2023
May 22, 2023
May 16, 2023
May 11, 2023
May 4, 2023
April 13, 2023
March 2, 2023
February 9, 2023
December 10, 2022
November 27, 2022
September 19, 2022