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[ARTICLE · art-19934] src=arxiv.org pub= topic=artificial-intelligence verified=true sentiment=· neutral

The Ghost Annotator: a Framework to Explore Human Label Variation in Content Moderation through Conformal Prediction

Researchers introduced the Ghost Annotator framework, which combines conformal prediction with collaborative filtering to model how large language models (LLMs) behave compared to human annotators in content moderation tasks. The framework uses a Ghost Prediction metric to quantify cases where model predictions diverge from all human annotations, revealing that larger models are more confident when classifying texts that no human annotator would label. The findings demonstrate a consistent pattern of demographic misalignment across four LLMs and datasets, indicating structural bias likely originating from pretraining data.

read1 min publishedJun 3, 2026

arXiv:2606.02911v1 Announce Type: new Abstract: Current research primarily focuses on model performance, while comparatively less attention has been devoted to uncertainty estimation, particularly in settings where LLMs are increasingly used to generate annotated data. We introduce a framework combining conformal prediction with Collaborative Filtering-style annotators' representation to model LLM behavior in relation to human annotators and to analyze patterns of agreement and disagreement. Using Non-Conformity Scores, we introduce the Ghost Prediction metric and the Ghost Annotator representation to quantify cases in which model predictions diverge from all available human annotations. We compute cosine similarity measures to explore differences in model behavior across sociodemographic axes. We evaluated four LLMs of different size and families across four content moderation datasets. Our finding shows that while we find that all models uncertainty increases with annotator disagreement, larger models tend to be more confident in the classification of texts that are not aligned with any human annotation. Finally, the Ghost Annotator framework reveals a consistent and robust pattern of demographic misalignment, suggesting a structural bias likely rooted in pretraining corpora.

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