网络学习中认知负荷检测的多模态方法研究

Nico Herbig, Tim Düwel, M. Helali, Lea Eckhart, P. Schuck, Subhabrata Choudhury, A. Krüger
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引用次数: 10

摘要

在本文中,我们分析了广泛的生理、行为、性能和主观测量来估计在线学习中的认知负荷(CL)。据我们所知,所分析的传感器测量包含了迄今为止在电子学习领域研究过的各种模式中最多样化的一组特征。我们的重点是根据所探索的特征预测主观报告的CL和难度以及内在内容难度。一项针对21名参与者的研究表明,对内在内容难度进行分类对测试比对视频更有效,在视频中,参与者主动解决问题,而不是被动地观看视频。用于预测主观上报告的语言水平和难度的回归分析在内容主题中也具有非常低的误差。在探索的特征模式中,基于眼睛的特征产生最好的结果,其次是基于心脏的,然后是基于皮肤的测量。此外,与使用单一模态相比,组合多个模态可以获得更好的性能。提出的结果可以指导认知感知电子学习环境的研究人员和开发人员,通过提出特别有效的模式和特征来估计难度和CL。
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Investigating Multi-Modal Measures for Cognitive Load Detection in E-Learning
In this paper, we analyze a wide range of physiological, behavioral, performance, and subjective measures to estimate cognitive load (CL) during e-learning. To the best of our knowledge, the analyzed sensor measures comprise the most diverse set of features from a variety of modalities that have to date been investigated in the e-learning domain. Our focus lies on predicting the subjectively reported CL and difficulty as well as intrinsic content difficulty based on the explored features. A study with 21 participants, who learned through videos and quizzes in a Moodle environment, shows that classifying intrinsic content difficulty works better for quizzes than for videos, where participants actively solve problems instead of passively consuming videos. Regression analysis for predicting the subjectively reported level of CL and difficulty also works with very low error within content topics. Among the explored feature modalities, eye-based features yield the best results, followed by heart-based and then skin-based measures. Furthermore, combining multiple modalities results in better performance compared to using a single modality. The presented results can guide researchers and developers of cognition-aware e-learning environments by suggesting modalities and features that work particularly well for estimating difficulty and CL.
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