A Novice-Expert Study of Modeling Skills and Knowledge Structures about Air Quality |
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Authors: | Ying-Shao Hsu Li-Fen Lin Hsin-Kai Wu Dai-Ying Lee Fu-Kwun Hwang |
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Affiliation: | 1. Graduate Institute of Science Education, National Taiwan Normal University, 88, Section?4 Ting-Chou Road, Taipei, 116, Taiwan 2. Department of Earth Sciences, National Taiwan Normal University, Taipei, Taiwan 3. Department of Physics, National Taiwan Normal University, Taipei, Taiwan
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Abstract: | This study compared modeling skills and knowledge structures of four groups as seen in their understanding of air quality. The four groups were: experts (atmospheric scientists), intermediates (upper-level graduate students in a different field), advanced novices (talented 11th and 12th graders), and novices (10th graders). It was found that when the levels of modeling skills were measured, for most skills there was a gradual increase across the spectrum from the novices to the advanced novices to the intermediates to the experts. The study found the experts used model-based reasoning, the intermediates and advanced novices used relation-based reasoning, and the novices used phenomena-based reasoning to anticipate conclusions. The experts and intermediates used more bi-variable relationships in experimental design and anticipated conclusions, but used more multiple-variable relationships in identifying relationships. By contrast, the advanced novices and novices mostly used bi-variable relationships in all modeling skills. Based on these findings, we suggest design principles for model-based teaching and learning such as designing learning activities to encourage model-based reasoning, scaffolding one??s modeling with multiple representations, testing models in authentic situations, and nurturing domain-specific knowledge during modeling. |
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