TARAKLI, Imene (2025). Teachable Robots for Education: Bridging Children Learning and Cognitive Modelling. Doctoral, Sheffield Hallam University. [Thesis]
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Abstract
This thesis investigates how social robots can serve as peers within the learning-byteaching
paradigm. Taking inspiration from developmental psychology, it validates a
cognitive peer-model architecture grounded in Interactive Reinforcement Learning,
where children teach a robot through evaluative feedback and observe its progress.
The model was evaluated in a large-scale study with primary school pupils. To
maximise ecological validity, the study preserved the classroom environment and
enabled multiple one-on-one child–robot interactions to occur in parallel. Findings
showed that children engaged more with the robot than with independent practice,
which in some cases translated into higher retention of the taught material.
Because human–robot interaction extends beyond cognitive outcomes, the thesis
also examines psychological and social dimensions of teachable robots. A controlled
study explored how varying levels of involvement in teaching influenced perceptions
of trust, ownership, and anthropomorphism. Results indicated that while deeper
involvement increased self-investment, positive perceptions depended strongly on the
robot’s transparency and behaviour.
Finally, the thesis proposes two new frameworks that align robot learning more
closely with natural human teaching. ECLAIR enables robots to interpret the diverse
verbal feedback children naturally provide, while INFORM, inspired by memory
consolidation, allows robots to replay experiences offline to recover structure and
generalise beyond immediate tasks.
Taken together, these contributions present a path toward robots that learn as
peers: responsive, imperfect, and capable of growing alongside children. The thesis
argues that making robots adaptive learners also improves the learning experience of
the children who teach them.
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