GLAT: The Generative AI Literacy Assessment Test
November 01, 2024 Β· Declared Dead Β· π Computers and Education: Artificial Intelligence
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Authors
Yueqiao Jin, Roberto Martinez-Maldonado, Dragan GaΕ‘eviΔ, Lixiang Yan
arXiv ID
2411.00283
Category
cs.HC: Human-Computer Interaction
Citations
39
Venue
Computers and Education: Artificial Intelligence
Last Checked
3 months ago
Abstract
The rapid integration of generative artificial intelligence (GenAI) technology into education necessitates precise measurement of GenAI literacy to ensure that learners and educators possess the skills to engage with and critically evaluate this transformative technology effectively. Existing instruments often rely on self-reports, which may be biased. In this study, we present the GenAI Literacy Assessment Test (GLAT), a 20-item multiple-choice instrument developed following established procedures in psychological and educational measurement. Structural validity and reliability were confirmed with responses from 355 higher education students using classical test theory and item response theory, resulting in a reliable 2-parameter logistic (2PL) model (Cronbach's alpha = 0.80; omega total = 0.81) with a robust factor structure (RMSEA = 0.03; CFI = 0.97). Critically, GLAT scores were found to be significant predictors of learners' performance in GenAI-supported tasks, outperforming self-reported measures such as perceived ChatGPT proficiency and demonstrating external validity. These results suggest that GLAT offers a reliable and valid method for assessing GenAI literacy, with the potential to inform educational practices and policy decisions that aim to enhance learners' and educators' GenAI literacy, ultimately equipping them to navigate an AI-enhanced future.
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