Class Integration of ChatGPT and Learning Analytics for Higher
Education.
Abstract
Background: Active Learning with AI-tutoring in Higher Education tackles
dropout rates. Objectives: To investigate teaching-learning
methodologies preferred by students. ChatGPT-based gamified learning
methodology is compared to another active learning methodology and a
traditional methodology. Study with Learning Analytics to evaluate
alternatives, their implementation, and help students elect the best
strategies according to their preferences. Methods: Comparative study of
three learning methodologies in a Single-Group counterbalanced with 45
university students. It follows a pretest/post-test approach using AHP
and SAM. HRV and GSR used for emotional state estimation. Findings:
Criteria related to in-class experiences valued higher than test-related
criteria. Chat-GPT integration was well regarded compared to
well-established methodologies. Student emotion self-assessment
correlated with physiological measures, validating used Learning
Analitycs. Conclusions: Proposed model AI-Tutoring classroom integration
functions effectively at increasing engagement and avoiding false
information. AHP with the physiological measuring allows students to
determine preferred learning methodologies, avoiding biases, and
acknowledging minority groups.