Machine Learning · Statistics
A Perspective on Explainable Artificial Intelligence Methods: SHAP and LIME
Ahmed Salih, Zahra Raisi-Estabragh, Ilaria Boscolo Galazzo, Petia Radeva +3
2024-07-01
Artificial Intelligence · Computer Science
Evaluating the Ability of Explanations to Disambiguate Models in a Rashomon Set
Kaivalya Rawal, Eoin Delaney, Zihao Fu, Sandra Wachter +1
2026-01-14
Machine Learning · Computer Science
Unified Explanations in Machine Learning Models: A Perturbation Approach
Jacob Dineen, Don Kridel, Daniel Dolk, David Castillo
2024-05-31
Artificial Intelligence · Computer Science
A Theoretical Framework for AI Models Explainability with Application in Biomedicine
Matteo Rizzo, Alberto Veneri, Andrea Albarelli, Claudio Lucchese +2
2023-06-16
Artificial Intelligence · Computer Science
How can I choose an explainer? An Application-grounded Evaluation of Post-hoc Explanations
Sérgio Jesus, Catarina Belém, Vladimir Balayan, João Bento +3
2021-01-25
Machine Learning · Computer Science
An Experimental Investigation into the Evaluation of Explainability Methods
Sédrick Stassin, Alexandre Englebert, Géraldin Nanfack, Julien Albert +6
2023-05-29
Artificial Intelligence · Computer Science
Agentic Explainable Artificial Intelligence (Agentic XAI) Approach To Explore Better Explanation
Tomoaki Yamaguchi, Yutong Zhou, Masahiro Ryo, Keisuke Katsura
2026-03-13
Human-Computer Interaction · Computer Science
Measure Utility, Gain Trust: Practical Advice for XAI Researcher
Brittany Davis, Maria Glenski, William Sealy, Dustin Arendt
2020-09-29
Artificial Intelligence · Computer Science
A three-Level Framework for LLM-Enhanced eXplainable AI: From technical explanations to natural language
Marilyn Bello, Rafael Bello, Maria-Matilde García, Ann Nowé +2
2026-01-06
Machine Learning · Computer Science
A Comprehensive Guide to Explainable AI: From Classical Models to LLMs
Weiche Hsieh, Ziqian Bi, Chuanqi Jiang, Junyu Liu +23
2024-12-10
Machine Learning · Computer Science
Which LIME should I trust? Concepts, Challenges, and Solutions
Patrick Knab, Sascha Marton, Udo Schlegel, Christian Bartelt
2025-04-01
Machine Learning · Computer Science
Beyond Explaining: Opportunities and Challenges of XAI-Based Model Improvement
Leander Weber, Sebastian Lapuschkin, Alexander Binder, Wojciech Samek
2022-03-16
Machine Learning · Computer Science
When Can You Trust Your Explanations? A Robustness Analysis on Feature Importances
Ilaria Vascotto, Alex Rodriguez, Alessandro Bonaita, Luca Bortolussi
2025-10-14
Software Engineering · Computer Science
Do We Need Another Explainable AI Method? Toward Unifying Post-hoc XAI Evaluation Methods into an Interactive and Multi-dimensional Benchmark
Mohamed Karim Belaid, Eyke Hüllermeier, Maximilian Rabus, Ralf Krestel
2022-10-05
Artificial Intelligence · Computer Science
Learning Quantifiable Visual Explanations Without Ground-Truth
Amritpal Singh, Andrey Barsky, Mohamed Ali Souibgui, Ernest Valveny +1
2026-05-19
Artificial Intelligence · Computer Science
Explaining Explanations: An Overview of Interpretability of Machine Learning
Leilani H. Gilpin, David Bau, Ben Z. Yuan, Ayesha Bajwa +2
2019-02-05
Artificial Intelligence · Computer Science
Explainable Artificial Intelligence Techniques for Interpretation of Food Models: a Review
Leonardo Arrighi, Ingrid Alves de Moraes, Marco Zullich, Michele Simonato +2
2026-04-28