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Exploring Neural Trajectories of Scientific Problem Solving Skill Acquisition

机译:探索科学解决问题技能习得的神经轨迹

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摘要

We have modeled changes in electroencephalography (EEG) -derived measures of cognitive workload, engagement, and distraction as individuals developed and refined their problem solving skills in science. Subjects performing a series of problem solving simulations showed decreases in the times needed to solve the problems; however, metrics of high cognitive workload and high engagement remained the same. When these indices were measured within the navigation, decision, and display events in the simulations, significant differences in workload and engagement were often observed. In addition, differences in these event categories were also often observed across a series of the tasks, and were variable across individuals. These preliminary studies suggest that the development of EEG-derived models of the dynamic changes in cognitive indices of workload, distraction and engagement may be an important tool for understanding the development of problem solving skills in secondary school students.
机译:随着个人发展和完善他们在科学中解决问题的能力,我们已经模拟了脑电图(EEG)衍生的认知工作量,参与度和注意力分散度的变化。进行一系列问题解决模拟的受试者表明,解决问题所需的时间减少了。但是,高认知工作量和高参与度的指标保持不变。当在模拟中的导航,决策和显示事件中对这些指标进行测量时,通常会观察到工作量和参与度方面的显着差异。此外,在一系列任务中也经常观察到这些事件类别的差异,并且这些差异因人而异。这些初步研究表明,脑电图派生的工作量,分心和参与认知指数动态变化模型的建立可能是理解中学生解决问题能力发展的重要工具。

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