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Main Authors: Shafran, Or, Ronen, Shaked, Fahn, Omri, Ravfogel, Shauli, Geiger, Atticus, Geva, Mor
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.02464
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author Shafran, Or
Ronen, Shaked
Fahn, Omri
Ravfogel, Shauli
Geiger, Atticus
Geva, Mor
author_facet Shafran, Or
Ronen, Shaked
Fahn, Omri
Ravfogel, Shauli
Geiger, Atticus
Geva, Mor
contents Activation decomposition methods in language models are tightly coupled to geometric assumptions on how concepts are realized in activation space. Existing approaches search for individual global directions, implicitly assuming linear separability, which overlooks concepts with nonlinear or multi-dimensional structure. In this work, we leverage Mixture of Factor Analyzers (MFA) as a scalable, unsupervised alternative that models the activation space as a collection of Gaussian regions with their local covariance structure. MFA decomposes activations into two compositional geometric objects: the region's centroid in activation space, and the local variation from the centroid. We train large-scale MFAs for Llama-3.1-8B and Gemma-2-2B, and show they capture complex, nonlinear structures in activation space. Moreover, evaluations on localization and steering benchmarks show that MFA outperforms unsupervised baselines, is competitive with supervised localization methods, and often achieves stronger steering performance than sparse autoencoders. Together, our findings position local geometry, expressed through subspaces, as a promising unit of analysis for scalable concept discovery and model control, accounting for complex structures that isolated directions fail to capture.
format Preprint
id arxiv_https___arxiv_org_abs_2602_02464
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle From Directions to Regions: Decomposing Activations in Language Models via Local Geometry
Shafran, Or
Ronen, Shaked
Fahn, Omri
Ravfogel, Shauli
Geiger, Atticus
Geva, Mor
Computation and Language
Activation decomposition methods in language models are tightly coupled to geometric assumptions on how concepts are realized in activation space. Existing approaches search for individual global directions, implicitly assuming linear separability, which overlooks concepts with nonlinear or multi-dimensional structure. In this work, we leverage Mixture of Factor Analyzers (MFA) as a scalable, unsupervised alternative that models the activation space as a collection of Gaussian regions with their local covariance structure. MFA decomposes activations into two compositional geometric objects: the region's centroid in activation space, and the local variation from the centroid. We train large-scale MFAs for Llama-3.1-8B and Gemma-2-2B, and show they capture complex, nonlinear structures in activation space. Moreover, evaluations on localization and steering benchmarks show that MFA outperforms unsupervised baselines, is competitive with supervised localization methods, and often achieves stronger steering performance than sparse autoencoders. Together, our findings position local geometry, expressed through subspaces, as a promising unit of analysis for scalable concept discovery and model control, accounting for complex structures that isolated directions fail to capture.
title From Directions to Regions: Decomposing Activations in Language Models via Local Geometry
topic Computation and Language
url https://arxiv.org/abs/2602.02464