Cognitive Structure Generation: From Educational Priors to Policy Optimization
This addresses a foundational problem in educational practice for student modeling and psychometrics, though it appears incremental as it builds on existing diffusion and reinforcement learning methods.
The paper tackles the challenge of assessing students' cognitive structures by introducing Cognitive Structure Generation (CSG), a framework that generates these structures from educational priors and optimizes them with reinforcement learning, resulting in improved performance on knowledge tracing and cognitive diagnosis tasks across four real-world education datasets.
Cognitive structure is a student's subjective organization of an objective knowledge system, reflected in the psychological construction of concepts and their relations. However, cognitive structure assessment remains a long-standing challenge in student modeling and psychometrics, persisting as a foundational yet largely unassessable concept in educational practice. This paper introduces a novel framework, Cognitive Structure Generation (CSG), in which we first pretrain a Cognitive Structure Diffusion Probabilistic Model (CSDPM) to generate students' cognitive structures from educational priors, and then further optimize its generative process as a policy with hierarchical reward signals via reinforcement learning to align with genuine cognitive development levels during students' learning processes. Experimental results on four popular real-world education datasets show that cognitive structures generated by CSG offer more comprehensive and effective representations for student modeling, substantially improving performance on KT and CD tasks while enhancing interpretability.