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Main Authors: Sun, Yifan, Wang, Danding, Sheng, Qiang, Cao, Juan, Li, Jintao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.20293
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author Sun, Yifan
Wang, Danding
Sheng, Qiang
Cao, Juan
Li, Jintao
author_facet Sun, Yifan
Wang, Danding
Sheng, Qiang
Cao, Juan
Li, Jintao
contents Concept-based explainable approaches have emerged as a promising method in explainable AI because they can interpret models in a way that aligns with human reasoning. However, their adaption in the text domain remains limited. Most existing methods rely on predefined concept annotations and cannot discover unseen concepts, while other methods that extract concepts without supervision often produce explanations that are not intuitively comprehensible to humans, potentially diminishing user trust. These methods fall short of discovering comprehensible concepts automatically. To address this issue, we propose \textbf{ECO-Concept}, an intrinsically interpretable framework to discover comprehensible concepts with no concept annotations. ECO-Concept first utilizes an object-centric architecture to extract semantic concepts automatically. Then the comprehensibility of the extracted concepts is evaluated by large language models. Finally, the evaluation result guides the subsequent model fine-tuning to obtain more understandable explanations. Experiments show that our method achieves superior performance across diverse tasks. Further concept evaluations validate that the concepts learned by ECO-Concept surpassed current counterparts in comprehensibility.
format Preprint
id arxiv_https___arxiv_org_abs_2505_20293
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enhancing the Comprehensibility of Text Explanations via Unsupervised Concept Discovery
Sun, Yifan
Wang, Danding
Sheng, Qiang
Cao, Juan
Li, Jintao
Computation and Language
Concept-based explainable approaches have emerged as a promising method in explainable AI because they can interpret models in a way that aligns with human reasoning. However, their adaption in the text domain remains limited. Most existing methods rely on predefined concept annotations and cannot discover unseen concepts, while other methods that extract concepts without supervision often produce explanations that are not intuitively comprehensible to humans, potentially diminishing user trust. These methods fall short of discovering comprehensible concepts automatically. To address this issue, we propose \textbf{ECO-Concept}, an intrinsically interpretable framework to discover comprehensible concepts with no concept annotations. ECO-Concept first utilizes an object-centric architecture to extract semantic concepts automatically. Then the comprehensibility of the extracted concepts is evaluated by large language models. Finally, the evaluation result guides the subsequent model fine-tuning to obtain more understandable explanations. Experiments show that our method achieves superior performance across diverse tasks. Further concept evaluations validate that the concepts learned by ECO-Concept surpassed current counterparts in comprehensibility.
title Enhancing the Comprehensibility of Text Explanations via Unsupervised Concept Discovery
topic Computation and Language
url https://arxiv.org/abs/2505.20293