LGCLCRApr 2, 2025

Representation Bending for Large Language Model Safety

Stanford
arXiv:2504.01550v320 citationsh-index: 16ACL
Originality Highly original
AI Analysis

This addresses safety vulnerabilities in LLMs for high-stakes deployments, offering a scalable solution that is not incremental but a novel approach to enhancing inherent safety.

The paper tackles the problem of safety risks in Large Language Models by introducing RepBend, a method that disrupts harmful representations, resulting in up to a 95% reduction in attack success rates across jailbreak benchmarks.

Large Language Models (LLMs) have emerged as powerful tools, but their inherent safety risks - ranging from harmful content generation to broader societal harms - pose significant challenges. These risks can be amplified by the recent adversarial attacks, fine-tuning vulnerabilities, and the increasing deployment of LLMs in high-stakes environments. Existing safety-enhancing techniques, such as fine-tuning with human feedback or adversarial training, are still vulnerable as they address specific threats and often fail to generalize across unseen attacks, or require manual system-level defenses. This paper introduces RepBend, a novel approach that fundamentally disrupts the representations underlying harmful behaviors in LLMs, offering a scalable solution to enhance (potentially inherent) safety. RepBend brings the idea of activation steering - simple vector arithmetic for steering model's behavior during inference - to loss-based fine-tuning. Through extensive evaluation, RepBend achieves state-of-the-art performance, outperforming prior methods such as Circuit Breaker, RMU, and NPO, with up to 95% reduction in attack success rates across diverse jailbreak benchmarks, all with negligible reduction in model usability and general capabilities.

Code Implementations2 repos
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes