CLApr 6

Gradient-Controlled Decoding: A Safety Guardrail for LLMs with Dual-Anchor Steering

arXiv:2604.0517997.7h-index: 6
Predicted impact top 4% in CL · last 90 daysOriginality Highly original
AI Analysis

This addresses safety concerns for LLM users by providing a more reliable guardrail against harmful content while maintaining usability.

The paper tackles the problem of LLM vulnerability to jailbreak attacks while minimizing false positives that degrade user experience, introducing Gradient-Controlled Decoding (GCD) which reduces false positives by 52% compared to prior work and lowers attack success rates by up to 10% with under 20 ms latency.

Large language models (LLMs) remain susceptible to jailbreak and direct prompt-injection attacks, yet the strongest defensive filters frequently over-refuse benign queries and degrade user experience. Previous work on jailbreak and prompt injection detection such as GradSafe, detects unsafe prompts with a single "accept all" anchor token, but its threshold is brittle and it offers no deterministic guarantee that harmful content will not be emitted once decoding begins. We introduce Gradient-Controlled Decoding (GCD), a training-free guardrail that combines an acceptance anchor token ("Sure") and refusal anchor token ("Sorry") tightening the decision boundary and significantly lowering false positives. In the mitigation stage, if a prompt is flagged, GCD preset-injects one or two refusal tokens ("Sorry, I can't...") before autoregressive decoding resumes, guaranteeing first-token safety regardless of sampling strategy. On ToxicChat, XSTest-v2, and AdvBench, GCD reduces false positives by 52% vs. GradSafe at comparable recall, lowers attack success rate by up to 10% vs. the strongest decoding-only baseline, adds under 15-20 ms latency on an average on V100 instances, transfers to LLaMA-2-7B, Mixtral-8x7B, and Qwen-2-7B, and requires only 20 demonstration templates.

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