CLMay 3

The Cylindrical Representation Hypothesis for Language Model Steering

arXiv:2605.0184493.02 citationsHas Code
AI Analysis

For researchers and practitioners using steering to control LLMs, this provides a principled explanation for observed instability, though it is an incremental theoretical refinement of the Linear Representation Hypothesis.

The paper introduces the Cylindrical Representation Hypothesis (CRH) to explain the instability of steering in large language models, showing that overlapping concept contributions create a cylindrical structure where a central axis drives concept generation and a surrounding plane controls sensitivity, with intrinsic uncertainty at the sector level accounting for unpredictable steering outcomes.

Steering is a widely used technique for controlling large language models, yet its effects are often unstable and hard to predict. Existing theoretical accounts are largely based on the Linear Representation Hypothesis (LRH). While LRH assumes that concepts can be orthogonalized for lossless control, this idealized mapping fails in real representations and cannot account for the observed unpredictability of steering. By relaxing LRH's orthogonality assumption while preserving linear representations, we show that overlapping concept contributions naturally yield a sample-specific axis-orthogonal structure. We formalize this as the Cylindrical Representation Hypothesis (CRH). In CRH, a central axis captures the main difference between concept absence and presence and drives concept generation. A surrounding normal plane controls steering sensitivity by determining how easily the axis can activate the target concept. Within this plane, only specific sensitive sectors strongly facilitate concept activation, while other sectors can suppress or delay it. While the surrounding normal plane can be reliably identified from difference vectors, the sensitive sector cannot, introducing intrinsic uncertainty at the sector level. This uncertainty provides a principled explanation for why steering outcomes often fluctuate even when using well-aligned directions. Our experiments verify the existence of the cylindrical structure and demonstrate that CRH provides a valid and practical way to interpret model steering behavior in real settings: https://github.com/mbzuai-nlp/CRH.

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