High School Students’ Meta-Modeling Knowledge

被引:1
|
作者
David Fortus
Yael Shwartz
Sherman Rosenfeld
机构
[1] Weizmann Institute of Science,Department of Science Teaching
来源
关键词
Models; Modeling; Learning progression;
D O I
暂无
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学科分类号
摘要
Modeling is a core scientific practice. This study probed the meta-modeling knowledge (MMK) of high school students who study science but had not had any explicit prior exposure to modeling as part of their formal schooling. Our goals were to (A) evaluate the degree to which MMK is dependent on content knowledge and (B) assess whether the upper levels of the modeling learning progression defined by Schwarz et al. (2009) are attainable by Israeli K–12 students. Nine Israeli high school students studying physics, chemistry, biology, or general science were interviewed individually, once using a context related to the science subject that they were learning and once using an unfamiliar context. All the interviewees displayed MMK superior to that of elementary and middle school students, despite the lack of formal instruction on the practice. Their MMK was independent of content area, but their ability to engage in the practice of modeling was content dependent. This study indicates that, given proper support, the upper levels of the learning progression described by Schwarz et al. (2009) may be attainable by K–12 science students. The value of explicitly focusing on MMK as a learning goal in science education is considered.
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页码:787 / 810
页数:23
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