AI RESEARCH
AI evaluation may bias perceptions: The importance of context in interpreting academic writing
arXiv CS.AI
•
ArXi:2605.26662v1 Announce Type: cross This paper examines how estimates of AI use in scientific writing can be biased when evaluation methods ignore contextual differences across countries and fields. Using large-scale data on journal publications from Dimensions, we construct AI-likeness benchmarks based on differences between human-written and LLM-rephrased abstracts. We show that a pooled benchmark may confound pre-existing stylistic variation with AI-generated text, producing substantial distortions across country-field groups even in pre-LLM publications.