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Articles

Teacher educators’ in-action mental models in different teaching situations

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Pages 25-41 | Received 17 Sep 2010, Accepted 29 Oct 2010, Published online: 09 Mar 2012
 

Abstract

In previous studies on teachers’ cognition, we discovered that teachers’ teaching can be described via a general in-action mental model (IAMM) concerning the structure of the mind and the roles of teaching in fostering children’s learning. The purpose of our study was to examine teacher educators’ IAMM regarding student teachers’ minds and learning in two different teaching contexts: (1) teaching an academic ; and (2) supervising student teachers in a mentor school. The same teachers taught the course in college and gave supervision. Four teachers taught two lessons, one in each of the kinds of teaching situations. We found that when the teacher educators taught an academic course, they had the same IAMM of the mind and learning as teachers who teach children in elementary and high school. This points to the generality of the IAMM. However, we also found that the IAMM has limitations and is contextual. In the supervision situation, we found three different IAMMs: open, reconstructive, and connective models. These findings suggest a need for further research on the IAMMs found when teacher educators supervise. Suggestions are made for ways to help teacher educators become aware of their IAMMs and that of their students.

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