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Cognitive state monitoring and the design of adaptive instruction in digital environments: lessons learned from cognitive workload assessment using a passive brain-computer interface approach

机译:数字环境中的认知状态监控和自适应指令的设计:使用被动脑机接口方法从认知工作量评估中学到的经验教训

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摘要

According to Cognitive Load Theory (CLT), one of the crucial factors for successful learning is the type and amount of working-memory load (WML) learners experience while studying instructional materials. Optimal learning conditions are characterized by providing challenges for learners without inducing cognitive over- or underload. Thus, presenting instruction in a way that WML is constantly held within an optimal range with regard to learners' working-memory capacity might be a good method to provide these optimal conditions. The current paper elaborates how digital learning environments, which achieve this goal can be developed by combining approaches from Cognitive Psychology, Neuroscience, and Computer Science. One of the biggest obstacles that needs to be overcome is the lack of an unobtrusive method of continuously assessing learners' WML in real-time. We propose to solve this problem by applying passive Brain-Computer Interface (BCI) approaches to realistic learning scenarios in digital environments. In this paper we discuss the methodological and theoretical prospects and pitfalls of this approach based on results from the literature and from our own research. We present a strategy on how several inherent challenges of applying BCIs to WML and learning can be met by refining the psychological constructs behind WML, by exploring their neural signatures, by using these insights for sophisticated task designs, and by optimizing algorithms for analyzing electroencephalography (EEG) data. Based on this strategy we applied machine-learning algorithms for cross-task classifications of different levels of WML to tasks that involve studying realistic instructional materials. We obtained very promising results that yield several recommendations for future work.
机译:根据认知负荷理论(CLT),成功学习的关键因素之一是学习者在学习教学资料时所经历的工作记忆负荷(WML)的类型和数量。最佳学习条件的特征是在不引起认知超负荷或负负荷的情况下为学习者提供挑战。因此,以学习者的工作记忆能力恒定地将WML保持在最佳范围内的方式呈现指令,可能是提供这些最佳条件的好方法。本文阐述了如何通过结合认知心理学,神经科学和计算机科学的方法来开发实现这一目标的数字学习环境。需要克服的最大障碍之一是缺乏一种能够连续不断地实时评估学习者的WML的简便方法。我们建议通过在数字环境中将被动脑机接口(BCI)方法应用于现实学习场景来解决此问题。在本文中,我们根据文献和我们自己的研究结果,讨论了这种方法的方法论和理论前景以及陷阱。我们提出了一种策略,通过完善WML背后的心理结构,探索其神经特征,通过将这些见解用于复杂的任务设计以及通过优化用于分析脑电图的算法,可以解决如何将BCI应用于WML和学习的若干固有挑战。脑电图)数据。基于此策略,我们将机器学习算法应用于WML不同级别的跨任务分类,以用于涉及学习现实教学材料的任务。我们获得了非常有希望的结果,并为以后的工作提出了一些建议。

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