AILGNov 11, 2025

SOM Directions are Better than One: Multi-Directional Refusal Suppression in Language Models

arXiv:2511.08379v25 citationsh-index: 47
Originality Incremental advance
AI Analysis

This work addresses the challenge of understanding and manipulating safety mechanisms in language models, which is incremental but offers improved performance over existing methods.

The paper tackled the problem of suppressing refusal behavior in safety-aligned language models by proposing a method using Self-Organizing Maps to extract multiple refusal directions, which outperformed single-direction baselines and specialized jailbreak algorithms in suppressing refusal.

Refusal refers to the functional behavior enabling safety-aligned language models to reject harmful or unethical prompts. Following the growing scientific interest in mechanistic interpretability, recent work encoded refusal behavior as a single direction in the model's latent space; e.g., computed as the difference between the centroids of harmful and harmless prompt representations. However, emerging evidence suggests that concepts in LLMs often appear to be encoded as a low-dimensional manifold embedded in the high-dimensional latent space. Motivated by these findings, we propose a novel method leveraging Self-Organizing Maps (SOMs) to extract multiple refusal directions. To this end, we first prove that SOMs generalize the prior work's difference-in-means technique. We then train SOMs on harmful prompt representations to identify multiple neurons. By subtracting the centroid of harmless representations from each neuron, we derive a set of multiple directions expressing the refusal concept. We validate our method on an extensive experimental setup, demonstrating that ablating multiple directions from models' internals outperforms not only the single-direction baseline but also specialized jailbreak algorithms, leading to an effective suppression of refusal. Finally, we conclude by analyzing the mechanistic implications of our approach.

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