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Autores principales: Ferrando, Javier, Lopez-Cuena, Enrique, Martin-Torres, Pablo Agustin, Hinjos, Daniel, Arias-Duart, Anna, Garcia-Gasulla, Dario
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2603.22593
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author Ferrando, Javier
Lopez-Cuena, Enrique
Martin-Torres, Pablo Agustin
Hinjos, Daniel
Arias-Duart, Anna
Garcia-Gasulla, Dario
author_facet Ferrando, Javier
Lopez-Cuena, Enrique
Martin-Torres, Pablo Agustin
Hinjos, Daniel
Arias-Duart, Anna
Garcia-Gasulla, Dario
contents Sparse Autoencoders uncover thousands of features in vision models, yet explaining these features without requiring human intervention remains an open challenge. While previous work has proposed generating correlation-based explanations based on top activating input examples, we present a fundamentally different alternative based on causal interventions. We leverage the structure of Vision-Language Models and steer individual SAE features in the vision encoder after providing an empty image. Then, we prompt the language model to explain what it ``sees'', effectively eliciting the visual concept represented by each feature. Results show that Steering offers an scalable alternative that complements traditional approaches based on input examples, serving as a new axis for automated interpretability in vision models. Moreover, the quality of explanations improves consistently with the scale of the language model, highlighting our method as a promising direction for future research. Finally, we propose Steering-informed Top-k, a hybrid approach that combines the strengths of causal interventions and input-based approaches to achieve state-of-the-art explanation quality without additional computational cost.
format Preprint
id arxiv_https___arxiv_org_abs_2603_22593
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Language Models Can Explain Visual Features via Steering
Ferrando, Javier
Lopez-Cuena, Enrique
Martin-Torres, Pablo Agustin
Hinjos, Daniel
Arias-Duart, Anna
Garcia-Gasulla, Dario
Computer Vision and Pattern Recognition
Artificial Intelligence
Sparse Autoencoders uncover thousands of features in vision models, yet explaining these features without requiring human intervention remains an open challenge. While previous work has proposed generating correlation-based explanations based on top activating input examples, we present a fundamentally different alternative based on causal interventions. We leverage the structure of Vision-Language Models and steer individual SAE features in the vision encoder after providing an empty image. Then, we prompt the language model to explain what it ``sees'', effectively eliciting the visual concept represented by each feature. Results show that Steering offers an scalable alternative that complements traditional approaches based on input examples, serving as a new axis for automated interpretability in vision models. Moreover, the quality of explanations improves consistently with the scale of the language model, highlighting our method as a promising direction for future research. Finally, we propose Steering-informed Top-k, a hybrid approach that combines the strengths of causal interventions and input-based approaches to achieve state-of-the-art explanation quality without additional computational cost.
title Language Models Can Explain Visual Features via Steering
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2603.22593