Exploring the mechanisms of qubit representations and introducing a new category system for visual representations: Results from expert ratings
Linda Qerimi, Sarah Malone, Eva Rexigel, Sascha Mehlhase, Jochen Kuhn, Stefan K\"uchemann

TL;DR
This study develops a new categorization system for visual quantum physics representations, validated through expert ratings, revealing significant differences in their effectiveness for teaching core quantum concepts.
Contribution
Introduces a comprehensive, criteria-based category system for evaluating visual quantum physics representations, grounded in educational theory and validated with expert assessments.
Findings
Significant differences in representation effectiveness for quantum concepts
Variations in potential misconceptions linked to shape and measurement
Expert ratings support the discriminative power of the new criteria
Abstract
In quantum physics (QP) education, the use of representations such as diagrams and visual aids that connect to mathematical concepts is crucial. Research in representation theory indicates that combining symbolic-mathematical elements (e.g. formulae) with visual-graphical representations enhances conceptual understanding more effectively than representations that merely depict phenomena. However, common representations vary widely, and existing categorisation systems do not adequately distinguish between them in QP. To address this, we developed a new set of differentiation criteria based on insights from representation research, QP education, and specific aspects of the quantum sciences. We created a comprehensive category system for evaluating visual QP representations for educational use, grounded in Ainsworths (2006) DeFT Framework. Twenty-one experts from four countries evaluated…
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Taxonomy
TopicsData Visualization and Analytics · Image Retrieval and Classification Techniques
