Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

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

About

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.

Jiaqian Li, Yanshu Li, Kuan-Hao Huang• 2026

Related benchmarks

TaskDatasetResultRank
Multiple-choice Question AnsweringModel-Written Evaluations (MWE) MCQ
Wealth Acc88.8
14
Attribute SteeringLlama-2-7b-Chat-hf Open-Ended Generation
Wealth Score2.26
7
Behavior SteeringAttribute Steering Evaluation Open-ended Generation Qwen3-14b based
Wealth Score2.32
5
Showing 3 of 3 rows

Other info

Follow for update