Explainable AI
Explainable AI (XAI) aims to make the decision-making processes of artificial intelligence models more transparent and understandable, addressing the "black box" problem inherent in many machine learning systems. Current research focuses on developing and evaluating various XAI methods, including those based on feature attribution (e.g., SHAP values), counterfactual explanations, and the integration of large language models for generating human-interpretable explanations across diverse data types (images, text, time series). The significance of XAI lies in its potential to improve trust in AI systems, facilitate debugging and model improvement, and enable responsible AI deployment in high-stakes applications like healthcare and finance.
Papers
December 9, 2022
December 8, 2022
December 6, 2022
November 27, 2022
November 25, 2022
November 24, 2022
November 12, 2022
November 11, 2022
November 8, 2022
November 6, 2022
November 2, 2022
October 27, 2022
October 25, 2022
October 21, 2022
October 20, 2022
October 13, 2022
October 10, 2022