Guiding LLMDecision-Making with Fairness Reward Models
–Neural Information Processing Systems
Large language models are increasingly used to support high-stakes decisions, potentially influencing who is granted bail or receives a loan. Naive chain-ofthought sampling can improve average decision accuracy, but has also been shown to amplify unfair bias. To address this challenge and enable the trustworthy use of reasoning models in high-stakes decision-making, we propose a framework for training a generalizable Fairness Reward Model (FRM). Our model assigns a fairness score to LLM reasoning, enabling the system to down-weight biased trajectories and favor equitable ones when aggregating decisions across reasoning chains. We show that a single Fairness Reward Model, trained on weakly supervised, LLM-annotated examples of biased versus unbiased reasoning, transfers across tasks, domains, and model families without additional fine-tuning. When applied to real-world decision-making tasks including recidivism prediction and social media moderation, our approach consistently improves fairness while matching, or even surpassing, baseline accuracy.
Neural Information Processing Systems
Jun-22-2026, 21:58:37 GMT
- Country:
- North America > United States (1.00)
- Asia (0.93)
- Genre:
- Overview (0.67)
- Research Report
- New Finding (1.00)
- Experimental Study (1.00)
- Industry:
- Law Enforcement & Public Safety > Crime Prevention & Enforcement (0.67)
- Law > Criminal Law (0.67)
- Technology: