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Auteurs principaux: She, Jianshu, Li, Xinyue, Xing, Eric, Liu, Zhengzhong, Ho, Qirong
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2508.01892
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author She, Jianshu
Li, Xinyue
Xing, Eric
Liu, Zhengzhong
Ho, Qirong
author_facet She, Jianshu
Li, Xinyue
Xing, Eric
Liu, Zhengzhong
Ho, Qirong
contents Language models can be steered by modifying their internal representations to control concepts such as emotion, style, or truthfulness in generation. However, the conditions for an effective intervention remain unclear and are often validated through heuristics and trial-and-error. To fill this gap, we demonstrate that intervention efficacy, measured by linear steerability (i.e., the ability to adjust output via linear transformations of hidden states), emerges during intermediate stages of training. Moreover, even closely related concepts (e.g., anger and sadness) exhibit steerability emergence at distinct stages of training. To better interpret the dynamics of steerability during training, we adapt existing intervention techniques into a unified framework, referred to as the "Intervention Detector" (ID), which is designed to reveal how linear steerability evolves over the course of training through hidden state and representation analysis. ID reveals that concepts become increasingly linearly separable in the hidden space as training progresses, which strongly correlates with the emergence of linear steerability. We further introduce ID-based metrics, such as heatmaps, entropy trends, and cosine similarity, to help interpret how linear steerability evolves throughout training. In addition, we apply ID across different model families to ensure the generality of our findings on steerability dynamics.
format Preprint
id arxiv_https___arxiv_org_abs_2508_01892
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle How Does Controllability Emerge In Language Models During Pretraining?
She, Jianshu
Li, Xinyue
Xing, Eric
Liu, Zhengzhong
Ho, Qirong
Machine Learning
Artificial Intelligence
Language models can be steered by modifying their internal representations to control concepts such as emotion, style, or truthfulness in generation. However, the conditions for an effective intervention remain unclear and are often validated through heuristics and trial-and-error. To fill this gap, we demonstrate that intervention efficacy, measured by linear steerability (i.e., the ability to adjust output via linear transformations of hidden states), emerges during intermediate stages of training. Moreover, even closely related concepts (e.g., anger and sadness) exhibit steerability emergence at distinct stages of training. To better interpret the dynamics of steerability during training, we adapt existing intervention techniques into a unified framework, referred to as the "Intervention Detector" (ID), which is designed to reveal how linear steerability evolves over the course of training through hidden state and representation analysis. ID reveals that concepts become increasingly linearly separable in the hidden space as training progresses, which strongly correlates with the emergence of linear steerability. We further introduce ID-based metrics, such as heatmaps, entropy trends, and cosine similarity, to help interpret how linear steerability evolves throughout training. In addition, we apply ID across different model families to ensure the generality of our findings on steerability dynamics.
title How Does Controllability Emerge In Language Models During Pretraining?
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2508.01892