Towards Rigorous Explainability by Feature Attribution

April 17, 2026 Β· Grace Period Β· + Add venue

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Authors Olivier LΓ©toffΓ©, Xuanxiang Huang, Joao Marques-Silva arXiv ID 2604.15898 Category cs.AI: Artificial Intelligence Citations 0
Abstract
For around a decade, non-symbolic methods have been the option of choice when explaining complex machine learning (ML) models. Unfortunately, such methods lack rigor and can mislead human decision-makers. In high-stakes uses of ML, the lack of rigor is especially problematic. One prime example of provable lack of rigor is the adoption of Shapley values in explainable artificial intelligence (XAI), with the tool SHAP being a ubiquitous example. This paper overviews the ongoing efforts towards using rigorous symbolic methods of XAI as an alternative to non-rigorous non-symbolic approaches, concretely for assigning relative feature importance.
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