Abstract
Background: While the integration of robot-based learning in early childhood education has gained increasing attention in recent years, there is still a lack of evidence regarding the impact of AI robots on young children's learning.
Objectives: The study explored the effectiveness of two AI education approaches in advancing kindergarteners' computational thinking, sequencing, self-regulation and theory of mind skills.
Methods: An experiment was conducted with 90 kindergarteners (ages 5–6) randomly assigned to either a direct instruction (DI), cooperative play (CP) or control group.
Results: Results show that (1) children in all three groups had significant improvements on computational thinking, sequencing and self-regulation; (2) both early AI education approaches (CP and DI) significantly enhance young children's computational thinking, sequencing, self-regulation and theory of mind skills; (3) the DI group had significant higher improvement than the CP group on computational thinking; (4) the CP group exhibited greater enhancements in theory of mind skills than the DI group.
Conclusion: These findings jointly demonstrate that each AI educational approach has unique strengths, underscoring the significance of designing new pedagogies to expand children's skills. Copyright © 2024 The Author(s).
Original language | English |
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Journal | Journal of Computer Assisted Learning |
Early online date | Jul 2024 |
DOIs | |
Publication status | E-pub ahead of print - Jul 2024 |