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Explainable Concept Generation through Vision-Language Preference Learning for Understanding Neural Networks' Internal Representations

Computer Vision and Pattern Recognition 2025-06-09 v3 Machine Learning

Abstract

Understanding the inner representation of a neural network helps users improve models. Concept-based methods have become a popular choice for explaining deep neural networks post-hoc because, unlike most other explainable AI techniques, they can be used to test high-level visual "concepts" that are not directly related to feature attributes. For instance, the concept of "stripes" is important to classify an image as a zebra. Concept-based explanation methods, however, require practitioners to guess and manually collect multiple candidate concept image sets, making the process labor-intensive and prone to overlooking important concepts. Addressing this limitation, in this paper, we frame concept image set creation as an image generation problem. However, since naively using a standard generative model does not result in meaningful concepts, we devise a reinforcement learning-based preference optimization (RLPO) algorithm that fine-tunes a vision-language generative model from approximate textual descriptions of concepts. Through a series of experiments, we demonstrate our method's ability to efficiently and reliably articulate diverse concepts that are otherwise challenging to craft manually.

Keywords

Cite

@article{arxiv.2408.13438,
  title  = {Explainable Concept Generation through Vision-Language Preference Learning for Understanding Neural Networks' Internal Representations},
  author = {Aditya Taparia and Som Sagar and Ransalu Senanayake},
  journal= {arXiv preprint arXiv:2408.13438},
  year   = {2025}
}

Comments

28 pages, 31 figures

R2 v1 2026-06-28T18:22:43.895Z