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Main Authors: Kozlowski, Austin C., Boutyline, Andrei
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.27169
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author Kozlowski, Austin C.
Boutyline, Andrei
author_facet Kozlowski, Austin C.
Boutyline, Andrei
contents We show that the geometric relations between semantic features in large language models' hidden states closely mirror human psychological associations. We construct feature vectors corresponding to 360 words and project them on 32 semantic axes (e.g. beautiful-ugly, soft-hard), and find that these projections correlate highly with human ratings of those words on the respective semantic scales. Second, we find that the cosine similarities between the semantic axes themselves are highly predictive of the correlations between these scales in the survey. Third, we show that substantial variance across the 32 semantic axes lies on a low-dimensional subspace, reproducing patterns typical of human semantic associations. Finally, we demonstrate that steering a word on one semantic axis causes spillover effects on the model's rating of that word on other semantic scales proportionate to the cosine similarity between those semantic axes. These findings suggest that features should be understood not only in isolation but through their geometric relations and the meaningful subspaces they form.
format Preprint
id arxiv_https___arxiv_org_abs_2604_27169
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Semantic Structure of Feature Space in Large Language Models
Kozlowski, Austin C.
Boutyline, Andrei
Computation and Language
Machine Learning
We show that the geometric relations between semantic features in large language models' hidden states closely mirror human psychological associations. We construct feature vectors corresponding to 360 words and project them on 32 semantic axes (e.g. beautiful-ugly, soft-hard), and find that these projections correlate highly with human ratings of those words on the respective semantic scales. Second, we find that the cosine similarities between the semantic axes themselves are highly predictive of the correlations between these scales in the survey. Third, we show that substantial variance across the 32 semantic axes lies on a low-dimensional subspace, reproducing patterns typical of human semantic associations. Finally, we demonstrate that steering a word on one semantic axis causes spillover effects on the model's rating of that word on other semantic scales proportionate to the cosine similarity between those semantic axes. These findings suggest that features should be understood not only in isolation but through their geometric relations and the meaningful subspaces they form.
title Semantic Structure of Feature Space in Large Language Models
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2604.27169