AI RESEARCH
Quantifying the Statistical Effect of Rubric Modifications on Human-Autorater Agreement
arXiv CS.CL
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ArXi:2605.06283v1 Announce Type: new Autoraters, also referred to as LLM-as-judges, are increasingly used for evaluation and automated content moderation. However, there is limited statistical analysis of how modifications in a rubric presented to both humans and autoraters affect their score agreement. Rubrics that ask for an overall or \emph{holistic} judgment - for example, rating the ``quality'' of an essay - may be inconsistently interpreted due to the complexity or subjectivity of the criteria.