AI RESEARCH
Measuring the (Un)Faithfulness of Concept-Based Explanations
arXiv CS.AI
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ArXi:2504.10833v4 Announce Type: replace-cross Deep vision models perform input-output computations that are hard to interpret. Concept-based explanation methods (CBEMs) increase interpretability by re-expressing parts of the model with human-understandable semantic units, or concepts. Checking if the derived explanations are faithful -- that is, they represent the model's internal computation -- requires a surrogate that combines concepts to compute the output. Simplifications made for interpretability inevitably reduce faithfulness, resulting in a tradeoff between the two.