J

Junqi Wang

Total Citations
3
h-index
1
Papers
1

Publications

#1 2602.00061v1 Jan 20, 2026

Simple Role Assignment is Extraordinarily Effective for Safety Alignment

Principle-based alignment often lacks context sensitivity and completeness. Grounded in Theory of Mind, we propose role conditioning as a compact alternative: social roles (e.g., mother, judge) implicitly encode both values and the cognitive schemas required to apply them. We introduce a training-free pipeline featuring a role-conditioned generator and iterative role-based critics for refinement. Across five model families, our approach consistently outperforms principle-based, Chain-of-Thought (CoT) and other baselines across benchmarks. Notably, it reduces unsafe outputs on the WildJailbreak benchmark from 81.4\% to 3.6\% with DeepSeek-V3. Not only for common safety benchmarks, it consistently applies for agentic safety tasks. These results establish role assignment as a powerful, interpretable paradigm for AI alignment and LLM-as-a-Judge construction.

J. Ding Ziheng Zhou Zhaowei Zhang Ruosen Gao Ying Wu +4
1 Citations