2021
2022
Simulating Changes in Prerequisite-Free Curricula
Funding:

Funded by the Ministry of Science (NRW, GER) as part of the project KI:edu.nrw.



Curriculum research is an important tool for understanding complex processes within a degree program. In particular, stochastic graphical models and simulations on related curriculum graphs have been used to make predictions about dropout rates, grades, and degree completion time. There exists, however, little research on changes in the curriculum and the evaluation of their impact. The available evaluation methods of curriculum changes assume pre-existing strict curriculum graphs in the form of directed acyclic graphs. These allow for a straightforward model-oriented probabilistic or graph topological investigation of curricula. But the existence of such graphs cannot generally be assumed. We present a novel generalizing approach in which a curriculum graph is constructed based on data, using measurable student flow. By applying a  discrete event simulation, we investigate the impact of policy changes on the curriculum and evaluate our approach on a sample data set from a German university. Our method is able to create a comparably effective and individually verifiable  simulation without requiring a curriculum graph. It can thus be extended to prerequisitefree curricula, making it feasible to evaluate changes to flexible curricula.


Publications

    2022

  • Simulating Policy Changes in Prerequisite-Free Curricula: A Supervised Data-Driven Approach
    Baucks, F., & Wiskott, L.
    In Proceedings of the 15th International Conference on Educational Data Mining (pp. 470–476) International Educational Data Mining Society

The Institut für Neuroinformatik (INI) is a research unit of the Faculty of Computer Science at the Ruhr-Universität Bochum. Its scientific goal is to understand the fundamental principles through which organisms generate behavior and cognition while linked to their environments through sensory and effector systems. Inspired by our insights into such natural cognitive systems, we seek new solutions to problems of information processing in artificial cognitive systems. We draw from a variety of disciplines that include experimental psychology and neurophysiology as well as machine learning, neural artificial intelligence, computer vision, and robotics.

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