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Main Authors: Franco, Gabriel, Loughridge, Carson, Crovella, Mark
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.13524
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author Franco, Gabriel
Loughridge, Carson
Crovella, Mark
author_facet Franco, Gabriel
Loughridge, Carson
Crovella, Mark
contents Identifying feature representations in language models is a central task in mechanistic interpretability. Several recent studies have made the observation that feature representations can be inferred in some cases from singular vectors of attention matrices. However, sound justification for this phenomenon is lacking. In this paper we address that question, asking: why and when do singular vectors align with features? First, we demonstrate that singular vectors robustly align with features in a model where features can be directly observed. We then show theoretically that such alignment is expected under a range of conditions. We close by asking how, operationally, alignment may be recognized in real models where feature representations are not directly observable. We identify sparse attention decomposition as a testable prediction of alignment, and show evidence that it emerges in real models in a manner consistent with predictions. Together these results suggest that alignment of singular vectors with features can be a sound and theoretically justified basis for feature identification in language models.
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publishDate 2026
record_format arxiv
spellingShingle Singular Vectors of Attention Heads Align with Features
Franco, Gabriel
Loughridge, Carson
Crovella, Mark
Machine Learning
Artificial Intelligence
Identifying feature representations in language models is a central task in mechanistic interpretability. Several recent studies have made the observation that feature representations can be inferred in some cases from singular vectors of attention matrices. However, sound justification for this phenomenon is lacking. In this paper we address that question, asking: why and when do singular vectors align with features? First, we demonstrate that singular vectors robustly align with features in a model where features can be directly observed. We then show theoretically that such alignment is expected under a range of conditions. We close by asking how, operationally, alignment may be recognized in real models where feature representations are not directly observable. We identify sparse attention decomposition as a testable prediction of alignment, and show evidence that it emerges in real models in a manner consistent with predictions. Together these results suggest that alignment of singular vectors with features can be a sound and theoretically justified basis for feature identification in language models.
title Singular Vectors of Attention Heads Align with Features
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2602.13524