Date
Publisher
arXiv
Educational systems often assume learners can identify their knowledge gaps,
yet research consistently shows that students struggle to recognize what they
don't know they need to learn-the "unknown unknowns" problem. This paper
presents a novel Recursive Prerequisite Knowledge Tracing (RPKT) system that
addresses this challenge through dynamic prerequisite discovery using large
language models. Unlike existing adaptive learning systems that rely on
pre-defined knowledge graphs, our approach recursively traces prerequisite
concepts in real-time until reaching a learner's actual knowledge boundary. The
system employs LLMs for intelligent prerequisite extraction, implements binary
assessment interfaces for cognitive load reduction, and provides personalized
learning paths based on identified knowledge gaps. Demonstration across
computer science domains shows the system can discover multiple nested levels
of prerequisite dependencies, identify cross-domain mathematical foundations,
and generate hierarchical learning sequences without requiring pre-built
curricula. Our approach shows great potential for advancing personalized
education technology by enabling truly adaptive learning across any academic
domain.
What is the application?
Who is the user?
Who age?
Study design
