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Rating Short L2 Essays on the CEFR Scale with GPT-4

Kevin Yancey, Geoffrey T. LaFlair, Anthony Verardi, Jill Burstein

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Abstract

Essay scoring is a critical task used to evaluate second-language (L2) writing proficiency on high-stakes language assessments. While automated scoring approaches are mature and have been around for decades, human scoring is still considered the gold standard, despite its high costs and well-known issues such as human rater fatigue and bias. The recent introduction of large language models (LLMs) brings new opportunities for automated scoring. In this paper, we evaluate how well GPT-3.5 and GPT-4 can rate short essay responses written by L2 English learners on a high-stakes language assessment, computing inter-rater agreement with human ratings. Results show that when calibration examples are provided, GPT-4 can perform almost as well as modern Automatic Writing Evaluation (AWE) methods, but agreement with human ratings can vary depending on the test-taker's first language (L1).

Topics & Concepts

Task (project management)Computer scienceLanguage assessmentTest (biology)Rating scaleNatural language processingScale (ratio)Gold standard (test)CalibrationLanguage proficiencyArtificial intelligenceWriting assessmentPsychologyMathematics educationStatisticsEngineeringDevelopmental psychologyBiologyMathematicsSystems engineeringPaleontologyQuantum mechanicsPhysicsNatural Language Processing TechniquesTopic ModelingText Readability and Simplification