Date
Publisher
arXiv
The rapid adoption of LLM-based conversational systems is already
transforming the landscape of educational technology. However, the current
state-of-the-art learning models do not take into account the student's
affective states. Multiple studies in educational psychology support the claim
that positive or negative emotional states can impact a student's learning
capabilities. To bridge this gap, we present MathBuddy, an emotionally aware
LLM-powered Math Tutor, which dynamically models the student's emotions and
maps them to relevant pedagogical strategies, making the tutor-student
conversation a more empathetic one. The student's emotions are captured from
the conversational text as well as from their facial expressions. The student's
emotions are aggregated from both modalities to confidently prompt our LLM
Tutor for an emotionally-aware response. We have effectively evaluated our
model using automatic evaluation metrics across eight pedagogical dimensions
and user studies. We report a massive 23 point performance gain using the win
rate and a 3 point gain at an overall level using DAMR scores which strongly
supports our hypothesis of improving LLM-based tutor's pedagogical abilities by
modeling students' emotions.
What is the application?
Who is the user?
Who age?
Study design
