Self-determined motivation for data-based decision-making: A relevance intervention in teacher training

While teachers’ core responsibility is to provide high-quality instruction, they are also expected to engage in data-based decision-making (DBDM), e.g., to analyse and use data to improve instruction. We developed a relevance intervention to promote student teachers' self-determined motivation...

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Bibliographic Details
Main Authors: Felix Dübbers, Martin Schmidt-Daffy
Format: Article
Language:English
Published: Taylor & Francis Group 2021-01-01
Series:Cogent Education
Subjects:
Online Access:http://dx.doi.org/10.1080/2331186X.2021.1956033
Description
Summary:While teachers’ core responsibility is to provide high-quality instruction, they are also expected to engage in data-based decision-making (DBDM), e.g., to analyse and use data to improve instruction. We developed a relevance intervention to promote student teachers' self-determined motivation and application intentions for DBDM and implemented it into a large compulsory university course. In a randomized controlled trial, participating students were either repeatedly prompted to reflect about the relevance of DBDM contents (relevance-condition) or asked to summarize DBDM contents (summary-condition). Students in the relevance-condition reported more self-determined forms of motivation, more autonomy-satisfaction, were more willing and self-confident to apply DBDM as teachers than students in the summary-condition. The intervention’s effect on application intentions was fully mediated by an increase in self-determined motivation. Students’ knowledge of DBDM could not be increased by the intervention. Implications for improving university educational training for student teachers are discussed.
ISSN:2331-186X