Evaluation of a deliberate-practice informed supplemental intervention in graduate Quantum Mechanics
- URL: http://arxiv.org/abs/2508.09917v1
- Date: Wed, 13 Aug 2025 16:12:01 GMT
- Title: Evaluation of a deliberate-practice informed supplemental intervention in graduate Quantum Mechanics
- Authors: Michael E. Robbins, Guillaume M. Laurent, Eric W. Burkholder,
- Abstract summary: We designed a supplemental intervention for a graduate-level quantum mechanics course.<n>We did not measure any statistically significant improvement in students' problem solving skills following our intervention.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Despite the prevalence of physics education research literature related to problem solving, recent studies have illustrated that opportunities for ``authentic'' problem solving -- conceptualized as making decisions with limited information using one's physics knowledge -- are limited at both the graduate and undergraduate levels in physics curricula. Building on one of these studies, we designed a supplemental intervention for a graduate-level quantum mechanics course which scaffolded the practice of making some of these critical decisions using the conceptual framework of deliberate practice. Despite similar incentive structures as prior interventions focused on conceptual understanding in similar contexts, we did not measure any statistically significant improvement in students' problem solving skills following our intervention, though faculty members involved with the next course and written qualifying exams indicated the students showed better-than-usual conceptual understanding. We explore a number of potential explanations for this disconnect and suggest future avenues of research in this area.
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