Computer-Based Classification of Preservice Physics Teachers’ Written Reflections

被引:0
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作者
Peter Wulff
David Buschhüter
Andrea Westphal
Anna Nowak
Lisa Becker
Hugo Robalino
Manfred Stede
Andreas Borowski
机构
[1] University of Potsdam,Physics Education Research
[2] University of Potsdam,Department of Educational Research
[3] University of Potsdam,Applied Computational Linguistics
关键词
Reflection; Teacher professional development; Natural language processing; Machine learning;
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摘要
Reflecting in written form on one’s teaching enactments has been considered a facilitator for teachers’ professional growth in university-based preservice teacher education. Writing a structured reflection can be facilitated through external feedback. However, researchers noted that feedback in preservice teacher education often relies on holistic, rather than more content-based, analytic feedback because educators oftentimes lack resources (e.g., time) to provide more analytic feedback. To overcome this impediment to feedback for written reflection, advances in computer technology can be of use. Hence, this study sought to utilize techniques of natural language processing and machine learning to train a computer-based classifier that classifies preservice physics teachers’ written reflections on their teaching enactments in a German university teacher education program. To do so, a reflection model was adapted to physics education. It was then tested to what extent the computer-based classifier could accurately classify the elements of the reflection model in segments of preservice physics teachers’ written reflections. Multinomial logistic regression using word count as a predictor was found to yield acceptable average human-computer agreement (F1-score on held-out test dataset of 0.56) so that it might fuel further development towards an automated feedback tool that supplements existing holistic feedback for written reflections with data-based, analytic feedback.
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页码:1 / 15
页数:14
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