How to Assess the Quality of Student-generated Qualitative Models during an Open Modelling Task?

Auteurs
Marco Kragten, Tessa Hoogma, Bert Bredeweg
Onderwijs

Publicatie

26 juli 2025

Abstract

Students often struggle with constructing models of system behaviour, particularly in open modelling tasks where there is no single correct answer. The challenge lies in providing effective support that helps students develop high quality models while maintaining their autonomy in the modelling process. This study presents a procedure for assessing the quality of student-generated qualitative models in open modelling tasks, based on three characteristics: correctness, parsimony, and completeness. The procedure was developed and refined using student-generated models from two secondary school tasks on thermoregulation and sound properties. The findings contribute to the development of automated support systems that guide students through open modelling tasks by focusing on quality characteristics rather than adherence to a predefined norm model.

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