Education Sciences (Sep 2024)

Re-Evaluating Components of Classical Educational Theories in AI-Enhanced Learning: An Empirical Study on Student Engagement

  • László Bognár,
  • György Ágoston,
  • Anetta Bacsa-Bán,
  • Tibor Fauszt,
  • Gyula Gubán,
  • Antal Joós,
  • Levente Zsolt Juhász,
  • Edina Kocsó,
  • Endre Kovács,
  • Edit Maczó,
  • Anita Irén Mihálovicsné Kollár,
  • Györgyi Strauber

DOI
https://doi.org/10.3390/educsci14090974
Journal volume & issue
Vol. 14, no. 9
p. 974

Abstract

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The primary goal of this research was to empirically identify and validate the factors influencing student engagement in a learning environment where AI-based chat tools, such as ChatGPT or other large language models (LLMs), are intensively integrated into the curriculum and teaching–learning process. Traditional educational theories provide a robust framework for understanding diverse dimensions of student engagement, but the integration of AI-based tools offers new personalized learning experiences, immediate feedback, and resource accessibility that necessitate a contemporary exploration of these foundational concepts. Exploratory Factor Analysis (EFA) was utilized to uncover the underlying factor structure within a large set of variables, and Confirmatory Factor Analysis (CFA) was employed to verify the factor structure identified by EFA. Four new factors have been identified: “Academic Self-Efficacy and Preparedness”, “Autonomy and Resource Utilization”, “Interest and Engagement”, and “Self-Regulation and Goal Setting.” Based on these factors, a new engagement measuring scale has been developed to comprehensively assess student engagement in AI-enhanced learning environments.

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