Robots and Children that Learn Together : Improving Knowledge Retention by Teaching Peer-Like Interactive Robots
Imene Tarakli, Samuele Vinanzi, Richard Moore, Alessandro Di Nuovo

TL;DR
This study demonstrates that interactive reinforcement learning enables social robots to effectively teach children in real classrooms, improving knowledge retention and engagement, especially for learners with lower prior knowledge.
Contribution
It introduces Interactive Reinforcement Learning as a scalable, pedagogically effective model for peer-like social robots in classroom settings.
Findings
Children taught by robots showed higher retention, especially on grammar tasks.
Lower prior knowledge learners benefited most from robot teaching.
Children adapted their teaching strategies and engaged more deeply.
Abstract
Despite growing interest in Learning-by-Teaching (LbT), few studies have explored how this paradigm can be implemented with autonomous, peer-like social robots in real classrooms. Most prior work has relied on scripted or Wizard-of-Oz behaviors, limiting our understanding of how real-time, interactive learning can be supported by artificial agents. This study addresses this gap by introducing Interactive Reinforcement Learning (RL) as a cognitive model for teachable social robots. We conducted two between-subject experiments with 58 primary school children, who either taught a robot or practiced independently on a tablet while learning French vocabulary (memorization) and grammatical rules (inference). The robot, powered by Interactive RL, learned from the child's evaluative feedback. Children in the LbT condition achieved significantly higher retention gains compared to those in the…
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