German Research Center for Artificial Intelligence, Trippstadter Str. 122, 67663 Kaiserslautern, Germany.
TU Kaiserslautern, Department of Computer Science, Erwin-Schrödinger-Str. 57, 67663 Kaiserslautern, Germany.
Sensors (Basel). 2020 Apr 29;20(9):2546. doi: 10.3390/s20092546.
Mind wandering is a drift of attention away from the physical world and towards our thoughts and concerns. Mind wandering affects our cognitive state in ways that can foster creativity but hinder productivity. In the context of learning, mind wandering is primarily associated with lower performance. This study has two goals. First, we investigate the effects of text semantics and music on the frequency and type of mind wandering. Second, using eye-tracking and electrodermal features, we propose a novel technique for automatic, user-independent detection of mind wandering. We find that mind wandering was most frequent in texts for which readers had high expertise and that were combined with sad music. Furthermore, a significant increase in task-related thoughts was observed for texts for which readers had little prior knowledge. A Random Forest classification model yielded an F 1 -Score of 0.78 when using only electrodermal features to detect mind wandering, of 0.80 when using only eye-movement features, and of 0.83 when using both. Our findings pave the way for building applications which automatically detect events of mind wandering during reading.
走神是一种注意力从物理世界漂移到我们的思想和关注点的现象。走神以促进创造力但阻碍生产力的方式影响我们的认知状态。在学习的背景下,走神主要与较低的表现相关。本研究有两个目标。首先,我们调查文本语义和音乐对走神频率和类型的影响。其次,我们使用眼动和皮肤电特征,提出了一种新颖的自动、用户独立的走神检测技术。我们发现,读者具有高专业知识并且文本与悲伤音乐相结合时,走神最频繁。此外,对于读者先前知识较少的文本,观察到与任务相关的思维显著增加。当仅使用皮肤电特征检测走神时,随机森林分类模型的 F1 得分为 0.78,仅使用眼动特征时为 0.80,同时使用时为 0.83。我们的发现为构建在阅读过程中自动检测走神事件的应用程序铺平了道路。