From Refusal Tokens to Refusal Control: Discovering and Steering Category-Specific Refusal Directions
arXiv cs.AI / 3/17/2026
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Key Points
- The paper introduces categorical refusal tokens to control and steer Llama 3 8B's refusal behavior at inference time, enabling multi-category refusals.
- It demonstrates that fine-tuning with these tokens yields separable, category-aligned directions in the model's residual stream which can be extracted as steering vectors.
- It proposes a learned low-rank combination that blends category directions within a whitened, orthonormal steering basis, providing a single intervention robust to activation-space anisotropy and transferable across same-architecture variants without additional training.
- Across benchmarks, the approach reduces over-refusals on benign prompts while increasing refusals on harmful prompts, highlighting practical safety benefits.
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