English

Beyond Attribution: Unified Concept-Level Explanations

Machine Learning 2026-02-27 v2

Abstract

There is an increasing need to integrate model-agnostic explanation techniques with concept-based approaches, as the former can explain models across different architectures while the latter makes explanations more faithful and understandable to end-users. However, existing concept-based model-agnostic explanation methods are limited in scope, mainly focusing on attribution-based explanations while neglecting diverse forms like sufficient conditions and counterfactuals, thus narrowing their utility. To bridge this gap, we propose a general framework UnCLE to elevate existing local model-agnostic techniques to provide concept-based explanations. Our key insight is that we can uniformly extend existing local model-agnostic methods to provide unified concept-based explanations with large pre-trained model perturbation. We have instantiated UnCLE to provide concept-based explanations in three forms: attributions, sufficient conditions, and counterfactuals, and applied it to popular text, image, and multimodal models. Our evaluation results demonstrate that UnCLE provides explanations more faithful than state-of-the-art concept-based explanation methods, and provides richer explanation forms that satisfy various user needs.

Keywords

Cite

@article{arxiv.2410.12439,
  title  = {Beyond Attribution: Unified Concept-Level Explanations},
  author = {Junhao Liu and Haonan Yu and Xin Zhang},
  journal= {arXiv preprint arXiv:2410.12439},
  year   = {2026}
}
R2 v1 2026-06-28T19:24:01.123Z