Date
Publisher
arXiv
Knowledge tracing models have enabled a range of intelligent tutoring systems
to provide feedback to students. However, existing methods for knowledge
tracing in learning sciences are predominantly reliant on statistical data and
instructor-defined knowledge components, making it challenging to integrate
AI-generated educational content with traditional established methods. We
propose a method for automatically extracting knowledge components from
educational content using instruction-tuned large multimodal models. We
validate this approach by comprehensively evaluating it against knowledge
tracing benchmarks in five domains. Our results indicate that the automatically
extracted knowledge components can effectively replace human-tagged labels,
offering a promising direction for enhancing intelligent tutoring systems in
limited-data scenarios, achieving more explainable assessments in educational
settings, and laying the groundwork for automated assessment.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
