Published July 18, 2022 | Version v1
Conference paper Open

Combining domain modelling and student modelling techniques in a single automated pipeline

Contributors

  • 1. University of Canterbury, NZ
  • 2. University of Illinois Urbana–Champaign, US

Description

In this paper, we propose a novel approach to combine domain modelling and student modelling techniques in a single, automated pipeline which does not require expert knowledge and can be used to predict future student performance. Domain modelling techniques map questions to concepts and student modelling techniques generate a mastery score for a concept. We conducted an evaluation using six large datasets from a Python programming course, evaluating the performance of different domain and student modelling techniques. The results showed that it is possible to develop a successful and fully automated pipeline which learns from raw data. The best results were achieved using alternating least squares on hill-climbing Q-matrices as domain modelling and exponential moving average as student modelling. This method outperformed all baselines in terms of accuracy and showed excellent run time.

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2022.EDM-long-papers.19.pdf

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