Contextualizing Problems to Student Interests at Scale in Intelligent Tutoring System Using Large Language Models

05/31/2023
by   Gautam Yadav, et al.
0

Contextualizing problems to align with student interests can significantly improve learning outcomes. However, this task often presents scalability challenges due to resource and time constraints. Recent advancements in Large Language Models (LLMs) like GPT-4 offer potential solutions to these issues. This study explores the ability of GPT-4 in the contextualization of problems within CTAT, an intelligent tutoring system, aiming to increase student engagement and enhance learning outcomes. Through iterative prompt engineering, we achieved meaningful contextualization that preserved the difficulty and original intent of the problem, thereby not altering values or overcomplicating the questions. While our research highlights the potential of LLMs in educational settings, we acknowledge current limitations, particularly with geometry problems, and emphasize the need for ongoing evaluation and research. Future work includes systematic studies to measure the impact of this tool on students' learning outcomes and enhancements to handle a broader range of problems.

READ FULL TEXT

page 5

page 6

research
05/18/2023

Are Large Language Models Fit For Guided Reading?

This paper looks at the ability of large language models to participate ...
research
10/29/2015

Automatic Synthesis of Geometry Problems for an Intelligent Tutoring System

This paper presents an intelligent tutoring system, GeoTutor, for Euclid...
research
01/25/2021

Modeling Assumptions Clash with the Real World: Transparency, Equity, and Community Challenges for Student Assignment Algorithms

Across the United States, a growing number of school districts are turni...
research
09/28/2020

Avoiding Help Avoidance: Using Interface Design Changes to Promote Unsolicited Hint Usage in an Intelligent Tutor

Within intelligent tutoring systems, considerable research has investiga...
research
12/20/2022

Does It Affect You? Social and Learning Implications of Using Cognitive-Affective State Recognition for Proactive Human-Robot Tutoring

Using robots in educational contexts has already shown to be beneficial ...

Please sign up or login with your details

Forgot password? Click here to reset