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Metric-Fair Prompting: Treating Similar Samples Similarly

8 December 2025
Jing Wang
Jie Shen
Xing Niu
Tong Zhang
Jeremy Weiss
    FaML
ArXiv (abs)PDFHTML
Main:9 Pages
7 Figures
Bibliography:2 Pages
3 Tables
Appendix:7 Pages
Abstract

We introduce \emph{Metric-Fair Prompting}, a fairness-aware prompting framework that guides large language models (LLMs) to make decisions under metric-fairness constraints. In the application of multiple-choice medical question answering, each {(question, option)} pair is treated as a binary instance with label +1+1+1 (correct) or −1-1−1 (incorrect). To promote {individual fairness}~--~treating similar instances similarly~--~we compute question similarity using NLP embeddings and solve items in \emph{joint pairs of similar questions} rather than in isolation. The prompt enforces a global decision protocol: extract decisive clinical features, map each \((\text{question}, \text{option})\) to a score f(x)f(x)f(x) that acts as confidence, and impose a Lipschitz-style constraint so that similar inputs receive similar scores and, hence, consistent outputs. Evaluated on the {MedQA (US)} benchmark, Metric-Fair Prompting is shown to improve performance over standard single-item prompting, demonstrating that fairness-guided, confidence-oriented reasoning can enhance LLM accuracy on high-stakes clinical multiple-choice questions.

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