Date
Publisher
arXiv
This study investigates the integration of individual human traits into an
empathetically adaptive educational robot tutor system designed to improve
student engagement and learning outcomes with corresponding Engagement Vector
measurement. While prior research in the field of Human-Robot Interaction (HRI)
has examined the integration of the traits, such as emotional intelligence,
memory-driven personalization, and non-verbal communication, by themselves,
they have thus-far neglected to consider their synchronized integration into a
cohesive, operational education framework. To address this gap, we customize a
Multi-Modal Large Language Model (LLaMa 3.2 from Meta) deployed with modules
for human-like traits (emotion, memory and gestures) into an AI-Agent
framework. This constitutes to the robot's intelligent core mimicing the human
emotional system, memory architecture and gesture control to allow the robot to
behave more empathetically while recognizing and responding appropriately to
the student's emotional state. It can also recall the student's past learning
record and adapt its style of interaction accordingly. This allows the robot
tutor to react to the student in a more sympathetic manner by delivering
personalized verbal feedback synchronized with relevant gestures. Our study
investigates the extent of this effect through the introduction of Engagement
Vector Model which can be a surveyor's pole for judging the quality of HRI
experience. Quantitative and qualitative results demonstrate that such an
empathetic responsive approach significantly improves student engagement and
learning outcomes compared with a baseline humanoid robot without these
human-like traits. This indicates that robot tutors with empathetic
capabilities can create a more supportive, interactive learning experience that
ultimately leads to better outcomes for the student.
What is the application?
Who is the user?
Who age?
