Dialogic Learning in Child-Robot Interaction: A Hybrid Approach to Personalized Educational Content Generation

Authors

  • Elena Malnatsky Vrije Universiteit Amsterdam
  • Shenghui Wang University of Twente
  • Koen V. Hindriks Vrije Universiteit Amsterdam
  • Mike E.U. Ligthart Vrije Universiteit Amsterdam

DOI:

https://doi.org/10.1609/aaaiss.v5i1.35622

Abstract

Dialogic learning fosters motivation and deeper understanding in education through purposeful and structured dialogues. Foundational models offer a transformative potential for child-robot interactions, enabling the design of personalized, engaging, and scalable interactions. However, their integration into educational contexts presents challenges in terms of ensuring age-appropriate and safe content and alignment with pedagogical goals. We introduce a hybrid approach to designing personalized educational dialogues in child-robot interactions. By combining rule-based systems with LLMs for selective offline content generation and human validation, the framework ensures educational quality and developmental appropriateness. We illustrate this approach through a project aimed at enhancing reading motivation, in which a robot facilitated book-related dialogues.

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Published

2025-05-28

How to Cite

Malnatsky, E., Wang, S., Hindriks, K. V., & Ligthart, M. E. (2025). Dialogic Learning in Child-Robot Interaction: A Hybrid Approach to Personalized Educational Content Generation. Proceedings of the AAAI Symposium Series, 5(1), 416–420. https://doi.org/10.1609/aaaiss.v5i1.35622

Issue

Section

Symposium on Child-AI Interaction in the Era of Foundation Models (Position papers)