Beyond Human Judgment: A Bayesian Evaluation of LLMs' Moral Values Understanding
Abstract
A Bayesian evaluation framework assesses large language models' moral understanding by modeling human annotator disagreements, showing AI models perform well with fewer false negatives.
How do large language models understand moral dimensions compared to humans? This first large-scale Bayesian evaluation of market-leading language models provides the answer. In contrast to prior work using deterministic ground truth (majority or inclusion rules), we model annotator disagreements to capture both aleatoric uncertainty (inherent human disagreement) and epistemic uncertainty (model domain sensitivity). We evaluate top language models (Claude Sonnet 4, DeepSeek-V3, Llama 4 Maverick) across 250K+ annotations from ~700 annotators on 100K+ texts spanning social media, news, and forums. Our GPU-optimized Bayesian framework processed 1M+ model queries, revealing that AI models typically rank among the top 25\% of human annotators, achieving much better-than-average balanced accuracy. Importantly, we find that AI produces far fewer false negatives than humans, highlighting their more sensitive moral detection capabilities.
Community
This work assesses large language models' moral understanding by modelling AI-human disagreements, showing that AI models perform well with more balanced predictions significantly reducing false negatives.
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