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Main Authors: Lin, Hongbin, Ren, Chenyang, Xu, Juangui, Hu, Zhengyu, Wang, Cheng-Long, Shu, Yao, Xiong, Hui, Zhang, Jingfeng, Wang, Di, Hu, Lijie
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.00451
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author Lin, Hongbin
Ren, Chenyang
Xu, Juangui
Hu, Zhengyu
Wang, Cheng-Long
Shu, Yao
Xiong, Hui
Zhang, Jingfeng
Wang, Di
Hu, Lijie
author_facet Lin, Hongbin
Ren, Chenyang
Xu, Juangui
Hu, Zhengyu
Wang, Cheng-Long
Shu, Yao
Xiong, Hui
Zhang, Jingfeng
Wang, Di
Hu, Lijie
contents Concept Bottleneck Models (CBMs) have garnered much attention for their ability to elucidate the prediction process through a human-understandable concept layer. However, most previous studies focused on static scenarios where the data and concepts are assumed to be fixed and clean. In real-world applications, deployed models require continuous maintenance: we often need to remove erroneous or sensitive data (unlearning), correct mislabeled concepts, or incorporate newly acquired samples (incremental learning) to adapt to evolving environments. Thus, deriving efficient editable CBMs without retraining from scratch remains a significant challenge, particularly in large-scale applications. To address these challenges, we propose Controllable Concept Bottleneck Models (CCBMs). Specifically, CCBMs support three granularities of model editing: concept-label-level, concept-level, and data-level, the latter of which encompasses both data removal and data addition. CCBMs enjoy mathematically rigorous closed-form approximations derived from influence functions that obviate the need for retraining. Experimental results demonstrate the efficiency and adaptability of our CCBMs, affirming their practical value in enabling dynamic and trustworthy CBMs.
format Preprint
id arxiv_https___arxiv_org_abs_2601_00451
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Controllable Concept Bottleneck Models
Lin, Hongbin
Ren, Chenyang
Xu, Juangui
Hu, Zhengyu
Wang, Cheng-Long
Shu, Yao
Xiong, Hui
Zhang, Jingfeng
Wang, Di
Hu, Lijie
Machine Learning
Concept Bottleneck Models (CBMs) have garnered much attention for their ability to elucidate the prediction process through a human-understandable concept layer. However, most previous studies focused on static scenarios where the data and concepts are assumed to be fixed and clean. In real-world applications, deployed models require continuous maintenance: we often need to remove erroneous or sensitive data (unlearning), correct mislabeled concepts, or incorporate newly acquired samples (incremental learning) to adapt to evolving environments. Thus, deriving efficient editable CBMs without retraining from scratch remains a significant challenge, particularly in large-scale applications. To address these challenges, we propose Controllable Concept Bottleneck Models (CCBMs). Specifically, CCBMs support three granularities of model editing: concept-label-level, concept-level, and data-level, the latter of which encompasses both data removal and data addition. CCBMs enjoy mathematically rigorous closed-form approximations derived from influence functions that obviate the need for retraining. Experimental results demonstrate the efficiency and adaptability of our CCBMs, affirming their practical value in enabling dynamic and trustworthy CBMs.
title Controllable Concept Bottleneck Models
topic Machine Learning
url https://arxiv.org/abs/2601.00451