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Empirical Validation of the CHAT-RV Framework: AI-Driven Hoax Filtering and Reference Validation among Indonesian Undergraduates
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2025
Jahr
Abstract
This study investigates the effectiveness of the CHAT-RV (ChatGPT for Hoax Analysis and Truthful Reference Validation) framework among 100 Indonesian undergraduates drawn from five academic disciplines (Islamic Education, Natural Sciences, Mathematics, Guidance and Counseling, and English Studies). Employing a quantitative survey design, data were collected using a structured Likert-scale instrument assessing four dimensions of the CHAT-RV model: hoax recognition, citation validation, epistemic trust calibration, and ethical AI usage. Results demonstrate significant improvements in students’ epistemic literacy, with Islamic Education and English majors outperforming peers in hoax recognition and citation triangulation. Factor analysis confirmed the reliability of the four-dimensional structure (Cronbach’s α = .87), while regression results indicated that citation validation (β = .31, p < .01) and ethical AI awareness (β = .28, p < .01) were the strongest predictors of digital literacy outcomes.
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