CLCYMay 14, 2025

Source framing triggers systematic evaluation bias in Large Language Models

arXiv:2505.13488v12 citationsh-index: 11
Originality Incremental advance
AI Analysis

This reveals a critical bias in LLM-mediated information systems, impacting fairness and neutrality, though it is incremental as it builds on known framing effects.

The study investigated how source framing affects LLM evaluation bias, finding that attributing statements to Chinese individuals systematically lowers agreement scores across models, particularly for Deepseek Reasoner, with a total of 192,000 assessments showing high agreement in blind conditions but breakdown with framing.

Large Language Models (LLMs) are increasingly used not only to generate text but also to evaluate it, raising urgent questions about whether their judgments are consistent, unbiased, and robust to framing effects. In this study, we systematically examine inter- and intra-model agreement across four state-of-the-art LLMs (OpenAI o3-mini, Deepseek Reasoner, xAI Grok 2, and Mistral) tasked with evaluating 4,800 narrative statements on 24 different topics of social, political, and public health relevance, for a total of 192,000 assessments. We manipulate the disclosed source of each statement to assess how attribution to either another LLM or a human author of specified nationality affects evaluation outcomes. We find that, in the blind condition, different LLMs display a remarkably high degree of inter- and intra-model agreement across topics. However, this alignment breaks down when source framing is introduced. Here we show that attributing statements to Chinese individuals systematically lowers agreement scores across all models, and in particular for Deepseek Reasoner. Our findings reveal that framing effects can deeply affect text evaluation, with significant implications for the integrity, neutrality, and fairness of LLM-mediated information systems.

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