Exploring Student Interactions with AI-Powered Learning Tools: A Qualitative Study Connecting Interaction Patterns to Educational Learning Theories
Prathamesh Muzumdar, Sumanth Cheemalapati

TL;DR
This study explores how students interact with AI learning tools and connects these patterns to educational theories, providing insights to improve AI-based education design.
Contribution
It introduces a framework linking student interaction patterns with traditional learning theories to inform better AI educational tool development.
Findings
Five main themes: Feedback, Cognitive Scaffolding, Dialogic Engagement, Personalization, Learning Agency.
Student perceptions of AI usefulness depend on personal connection.
Relating interactions to theories offers practical design insights.
Abstract
With the growing use of artificial intelligence in classrooms and online learning, it has become important to understand how students actually interact with AI tools and how such interactions match with traditional ways of learning. In this study, we focused on how students engage with tools like ChatGPT, Grammarly, and Khan Academy, and tried to connect their usage patterns with well known learning theories. A small experiment was carried out where undergraduate students completed different learning tasks using these tools, and later shared their thoughts through semi structured interviews. We looked at four types of interaction directive, assistive, dialogic, and empathetic and compared them with learning approaches like behaviorism, cognitivism, constructivism, and humanism. After analyzing the interviews, we found five main themes Feedback and Reinforcement, Cognitive Scaffolding,…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Artificial Intelligence in Healthcare and Education · AI in Service Interactions
