CLFeb 2

Steering Vector Fields for Context-Aware Inference-Time Control in Large Language Models

arXiv:2602.01654v12 citationsh-index: 1
Originality Incremental advance
AI Analysis

This addresses the problem of unreliable inference-time control in large language models for users needing precise and safe steering, representing an incremental improvement over existing methods.

The paper tackled the unreliability of steering vectors for controlling large language models at inference time, proposing Steering Vector Fields to make interventions context-dependent, which resulted in stronger and more reliable control across multiple tasks and models.

Steering vectors (SVs) offer a lightweight way to control large language models (LLMs) at inference time by shifting hidden activations, providing a practical middle ground between prompting and fine-tuning. Yet SVs can be unreliable in practice. Some concepts are unsteerable, and even when steering helps on average it can backfire for a non-trivial fraction of inputs. Reliability also degrades in long-form generation and multi-attribute steering. We take a geometric view of these failures. A static SV applies the same update vector everywhere in representation space, implicitly assuming that the concept-improving direction is constant across contexts. When the locally effective direction varies with the current activation, a single global vector can become misaligned, which yields weak or reversed effects. Guided by this perspective, we propose Steering Vector Fields (SVF), which learns a differentiable concept scoring function whose local gradient defines the steering direction at each activation, making interventions explicitly context-dependent. This formulation supports coordinated multi-layer interventions in a shared, aligned concept space, and enables efficient long-form and multi-attribute control within a unified framework. Across multiple LLMs and steering tasks, SVF delivers stronger and more reliable control, improving the practicality of inference-time steering.

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