Department of Electrical and Computer Engineering, Queen's University, Kingston, Ontario, ON K7L 3N6, Canada
Department of Electrical and Computer Engineering, Queen's University, Kingston, Ontario, ON K7L 3N6, Canada.
eNeuro. 2023 Mar 13;10(3). doi: 10.1523/ENEURO.0289-22.2023. Print 2023 Mar.
Studies of ongoing, rapid motor behaviors have often focused on the decision-making implicit in the task. Here, we instead study how decision-making integrates with the perceptual and motor systems and propose a framework of limited-capacity, pipelined processing with flexible resources to understand rapid motor behaviors. Results from three experiments show that human performance is consistent with our framework: participants perform objectively worse as task difficulty increases, and, surprisingly, this drop in performance is largest for the most skilled performers. As well, our analysis shows that the worst-performing participants can perform equally well under increased task demands, which is consistent with flexible neural resources being allocated to reduce bottleneck effects and improve overall performance. We conclude that capacity limits lead to information bottlenecks and that processes like attention help reduce the effects that these bottlenecks have on maximal performance.
对正在进行的快速运动行为的研究通常集中于任务中隐含的决策。在这里,我们转而研究决策如何与感知和运动系统相结合,并提出一个有限容量、流水线式处理、具有灵活资源的框架,以理解快速运动行为。三项实验的结果表明,人类的表现与我们的框架一致:随着任务难度的增加,参与者的表现客观上会变差,而且令人惊讶的是,表现最差的是最熟练的参与者。此外,我们的分析表明,表现最差的参与者在增加任务需求的情况下可以表现得同样出色,这与灵活的神经资源被分配以减少瓶颈效应和提高整体表现一致。我们的结论是,容量限制导致信息瓶颈,而像注意力这样的过程有助于减少这些瓶颈对最大性能的影响。