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Toward neuroadaptive support technologies for improving digital reading: a passive BCI-based assessment of mental workload imposed by text difficulty and presentation speed during reading

机译:朝着改善数字阅读的神经直视支持技术:在阅读期间,文本难度和呈现速度施加的心理工作量的基于被动BCI的评估

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We investigated whether a passive brain-computer interface that was trained to distinguish low and high mental workload in the electroencephalogram (EEG) can be used to identify (1) texts of different readability difficulties and (2) texts read at different presentation speeds. For twelve subjects we calibrated a subject-dependent, but task-independent predictive model classifying mental workload. We then recorded EEG data from each subject, while twelve texts in blocks of three were presented to them word by word. Half of the texts were easy, and the other half were difficult texts according to classic reading formulas. From each text category three texts were read at a self-adjusted comfortable presentation speed and the other three at an increased speed. For each subject we applied the predictive model to EEG data of each word of the twelve texts. We found that the resulting predictive values for mental workload were higher for difficult texts than for easy texts. Predictive values from texts presented at an increased speed were also higher than for those presented at a normal self-adjusted speed. The results suggest that the task-independent predictive model can be used on single-subject level to build a highly predictive user model of the reader over time. Such a model could be employed in a system which continuously monitors brain activity related to mental workload and adapts to specific reader's abilities and characteristics by adjusting the difficulty of text materials and the way it is presented to the reader in real time. A neuroadaptive system like this could foster efficient reading and text-based learning by keeping readers' mental workload levels at an individually optimal level.
机译:我们调查了被训练以区分脑电图(EEG)在脑电图(EEG)中培训的被动脑电脑接口,可用于识别(1)不同可读性困难的文本和(2)以不同的呈现速度读取的文本。对于十二个主题,我们校准了一个受试者依赖性,但独立于独立于任务的预测模型进行分类精神工作量。然后,我们从每个主题记录EEG数据,而三个块中的十二个文本被单词向他们呈现给他们。一半的文本很容易,另外一半是根据经典阅读公式的困难的文本。从每个文本中的每个文本中,三个文本以自调整舒适的演示速度读取,并以增加的速度读取。对于每个主题,我们将预测模型应用于十二个文本的每个单词的EEG数据。我们发现,由于简单的文本,所产生的心理工作量的预测值更高。从增加的速度提出的文本的预测值也高于以正常自调速速度呈现的那些。结果表明,任务 - 独立的预测模型可以用于单个主题级别,以随着时间的推移构建读者的高度预测性用户模型。这种模型可以在一个系统中使用,该系统连续监测与心理工作量相关的大脑活动,并通过调整文本材料的难度以及实时向读者呈现给读者的方式来适应特定的读者的能力和特征。一种像这样的神经直观系统可以通过将读者的心理工作量水平保持在单独的最佳水平来培养基于读取和基于文本的学习。

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