Michele Flammia


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2025

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Evaluating the Reliability of Human–AI Collaborative Scoring of Written Arguments Using Rational Force Model
Noriko Takahashi | Abraham Onuorah | Alina Reznitskaya | Evgeny Chukharev | Ariel Sykes | Michele Flammia | Joe Oyler
Proceedings of the Artificial Intelligence in Measurement and Education Conference (AIME-Con): Works in Progress

This study aims to improve the reliability of a new AI collaborative scoring system used to assess the quality of students’ written arguments. The system draws on the Rational Force Model and focuses on classifying the functional relation of each proposition in terms of support, opposition, acceptability, and relevance.