AI RESEARCH

Uncertainty Quantification as a Principled Foundation for Explainable Artificial Intelligence: A Case Study of Counterfactual Explanations

arXiv CS.LG

ArXi:2502.17007v2 Announce Type: replace In this paper we argue that, to its detriment, transparency research overlooks many foundational concepts of artificial intelligence. As an illustrating example we focus on uncertainty quantification in the context of counterfactual explainability, nstrating that its broader adoption could address key challenges in the field.