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Main Authors: Debole, Nicola, Passerini, Andrea, Teso, Stefano, Pugnana, Andrea, Marconato, Emanuele
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.16405
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author Debole, Nicola
Passerini, Andrea
Teso, Stefano
Pugnana, Andrea
Marconato, Emanuele
author_facet Debole, Nicola
Passerini, Andrea
Teso, Stefano
Pugnana, Andrea
Marconato, Emanuele
contents Concept-bottleneck models (CBMs) are neural classifiers that compute predictions from high-level concepts extracted from the input. CBMs ensure stakeholders can understand the concepts -- and the predictions they entail -- by learning these from concept-level annotations, which are however seldom available. Recent CBM architectures work around this issue by obtaining annotations from Vision-Language Models (VLMs). While greatly broadening applicability, doing so can yield lower quality concepts and therefore less interpretable models. We strike for a middle ground by introducing Vision-plus-Human-guided CBM (VH-CBM), a hybrid approach that exploits both VLMs and a small amount of dense annotations. VH-CBM employs a Gaussian Process in the VLM's embedding space, which captures useful global information about the target domain, to propagate the expert's supervision to any target data point. Our empirical evaluation shows how VH-CBM predicts more accurate concepts than VLM-guided CBMs even when annotating as little as 1% of the data, while sporting better concept calibration and supporting active learning.
format Preprint
id arxiv_https___arxiv_org_abs_2605_16405
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Concepts Worth Having: Refining VLM-Guided Concept Bottleneck Models with Minimal Annotations
Debole, Nicola
Passerini, Andrea
Teso, Stefano
Pugnana, Andrea
Marconato, Emanuele
Computer Vision and Pattern Recognition
Concept-bottleneck models (CBMs) are neural classifiers that compute predictions from high-level concepts extracted from the input. CBMs ensure stakeholders can understand the concepts -- and the predictions they entail -- by learning these from concept-level annotations, which are however seldom available. Recent CBM architectures work around this issue by obtaining annotations from Vision-Language Models (VLMs). While greatly broadening applicability, doing so can yield lower quality concepts and therefore less interpretable models. We strike for a middle ground by introducing Vision-plus-Human-guided CBM (VH-CBM), a hybrid approach that exploits both VLMs and a small amount of dense annotations. VH-CBM employs a Gaussian Process in the VLM's embedding space, which captures useful global information about the target domain, to propagate the expert's supervision to any target data point. Our empirical evaluation shows how VH-CBM predicts more accurate concepts than VLM-guided CBMs even when annotating as little as 1% of the data, while sporting better concept calibration and supporting active learning.
title Concepts Worth Having: Refining VLM-Guided Concept Bottleneck Models with Minimal Annotations
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.16405