The Neuroscientific Basis of Flow: Learning Progress Guides Task Engagement and Cognitive Control

Hairong Lu, Dimitri van der Linden, Arnold B. Bakker
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Abstract

People often strive for deep engagement in activities which is usually associated with feelings of flow: a state of full task absorption accompanied by a sense of control and fulfillment. The intrinsic factors driving such engagement and facilitating subjective feelings of flow remain unclear. Building on computational theories of intrinsic motivation, this study examines how learning progress predicts engagement and directs cognitive control. Results showed that task engagement, indicated by feelings of flow and distractibility, is a function of learning progress. Electroencephalography data further revealed that learning progress is associated with enhanced proactive preparation (e.g., reduced pre-stimulus contingent negativity variance and parietal alpha desynchronization) and improved feedback processing (e.g., increased P3b amplitude and parietal alpha desynchronization). The impact of learning progress on cognitive control is observed at the task-block and goal-episode levels, but not at the trial level. This suggests that learning progress shapes cognitive control over extended periods as progress accumulates. These findings highlight the critical role of learning progress in sustaining engagement and cognitive control in goal-directed behavior.
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流动的神经科学基础:学习进度引导任务参与和认知控制
人们常常努力深度参与活动,这通常与 "流动感 "有关:一种完全投入任务的状态,伴随着一种控制感和成就感。本研究以内在动机的计算理论为基础,探讨了学习进度如何预测参与度并引导认知控制。结果表明,任务参与度(由流动感和分心感显示)是学习进度的函数。脑电图数据进一步显示,学习进步与主动准备的增强(如刺激前或然负性方差和顶叶α非同步化的降低)和反馈处理的改善(如P3b振幅和顶叶α非同步化的增加)有关。学习进展对认知控制的影响是在任务块和目标情节水平上观察到的,而不是在试验水平上观察到的。这表明,随着学习进度的累积,学习进度会长期影响认知控制。这些发现强调了学习进度在目标定向行为中维持参与和认知控制的关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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