2021
DOI: 10.1177/0013164421992112
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A Short Note on Optimizing Cost-Generalizability via a Machine-Learning Approach

Abstract: The costs of an objective structured clinical examination (OSCE) are of concern to health profession educators globally. As OSCEs are usually designed under generalizability theory (G-theory) framework, this article proposes a machine-learning-based approach to optimize the costs, while maintaining the minimum required generalizability coefficient, a reliability-like index in G-theory. The authors adopted G-theory parameters yielded from an OSCE hosted by a medical school, reproduced the generalizability coeff… Show more

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