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Main Authors: Rodriguez, Marta Aparicio, Miscouridou, Xenia, Borovykh, Anastasia
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.19313
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author Rodriguez, Marta Aparicio
Miscouridou, Xenia
Borovykh, Anastasia
author_facet Rodriguez, Marta Aparicio
Miscouridou, Xenia
Borovykh, Anastasia
contents Despite significant advances in quality and complexity of the generations in text-to-image models, prompting does not always lead to the desired outputs. Controlling model behaviour by directly steering intermediate model activations has emerged as a viable alternative allowing to reach concepts in latent space that may otherwise remain inaccessible by prompt. In this work, we introduce a set of experiments to deepen our understanding of concept reachability. We design a training data setup with three key obstacles: scarcity of concepts, underspecification of concepts in the captions, and data biases with tied concepts. Our results show: (i) concept reachability in latent space exhibits a distinct phase transition, with only a small number of samples being sufficient to enable reachability, (ii) where in the latent space the intervention is performed critically impacts reachability, showing that certain concepts are reachable only at certain stages of transformation, and (iii) while prompting ability rapidly diminishes with a decrease in quality of the dataset, concepts often remain reliably reachable through steering. Model providers can leverage this to bypass costly retraining and dataset curation and instead innovate with user-facing control mechanisms.
format Preprint
id arxiv_https___arxiv_org_abs_2505_19313
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Concept Reachability in Diffusion Models: Beyond Dataset Constraints
Rodriguez, Marta Aparicio
Miscouridou, Xenia
Borovykh, Anastasia
Machine Learning
Despite significant advances in quality and complexity of the generations in text-to-image models, prompting does not always lead to the desired outputs. Controlling model behaviour by directly steering intermediate model activations has emerged as a viable alternative allowing to reach concepts in latent space that may otherwise remain inaccessible by prompt. In this work, we introduce a set of experiments to deepen our understanding of concept reachability. We design a training data setup with three key obstacles: scarcity of concepts, underspecification of concepts in the captions, and data biases with tied concepts. Our results show: (i) concept reachability in latent space exhibits a distinct phase transition, with only a small number of samples being sufficient to enable reachability, (ii) where in the latent space the intervention is performed critically impacts reachability, showing that certain concepts are reachable only at certain stages of transformation, and (iii) while prompting ability rapidly diminishes with a decrease in quality of the dataset, concepts often remain reliably reachable through steering. Model providers can leverage this to bypass costly retraining and dataset curation and instead innovate with user-facing control mechanisms.
title Concept Reachability in Diffusion Models: Beyond Dataset Constraints
topic Machine Learning
url https://arxiv.org/abs/2505.19313