Quantum cryptography visualized: assessing visual attention on multiple representations with eye tracking in an AR-enhanced quantum cryptography student experiment
- URL: http://arxiv.org/abs/2410.21975v2
- Date: Wed, 30 Oct 2024 11:26:12 GMT
- Title: Quantum cryptography visualized: assessing visual attention on multiple representations with eye tracking in an AR-enhanced quantum cryptography student experiment
- Authors: David Dzsotjan, Atakan Coban, Christoph Hoyer, Stefan Küchemann, Jürgen Durst, Anna Donhauser, Jochen Kuhn,
- Abstract summary: We present an analysis of the representations in our AR-enhanced quantum cryptography student experiment.
We also discuss learner visual attention with respect to the provided multiple representations based on the eye gaze data we have obtained.
- Score: 0.4004884551042419
- License:
- Abstract: With the advent and development of real-world quantum technology applications, a practically-focused quantum education including student quantum experiments are gaining increasing importance in physics curricula. In this paper, using the DeFT framework, we present an analysis of the representations in our AR-enhanced quantum cryptography student experiment, in order to assess their potential for promoting conceptual learning. We also discuss learner visual attention with respect to the provided multiple representations based on the eye gaze data we have obtained from a pilot study where N=38 students carried out the tasks in our AR-enhanced quantum cryptography student experiment.
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