Designs for learning about climate change as a complex system

Publication date: Available online 17 April 2017 Source:Learning and Instruction Author(s): Michael J. Jacobson, Lina Markauskaite, Alisha Portolese, Manu Kapur, Polly K. Lai, Gareth Roberts This paper reports on a study in which students used agent-based computer models to learn about complex systems ideas of relevance to understanding climate change. The experimental condition used a Productive Failure (PF) learning design in which ninth grade students initially worked with agent-based computer models to solve challenge problems followed by teacher instruction about targeted climate and complexity ideas. In contrast, the comparison condition employed a Direct Instruction (DI) learning design in which the teacher instruction was provided initially, followed by the students working on the same computer models and challenge problems as the experimental group. The students in the PF group scored significantly higher on the post-test on measures of climate and complex systems explanatory knowledge and near and far knowledge transfer. Theoretical and practical implications of these findings are considered.
Source: Learning and Instruction - Category: Psychiatry & Psychology Source Type: research