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认知努力成本学习的神经基础。

Neural systems underlying the learning of cognitive effort costs.

机构信息

Department of Cognitive, Linguistic, and Psychological Sciences, Brown University, Providence, RI, USA.

Brown Institute for Brain Sciences, Brown University, Providence, RI, USA.

出版信息

Cogn Affect Behav Neurosci. 2021 Aug;21(4):698-716. doi: 10.3758/s13415-021-00893-x. Epub 2021 May 7.

Abstract

People balance the benefits of cognitive work against the costs of cognitive effort. Models that incorporate prospective estimates of the costs of cognitive effort into decision making require a mechanism by which these costs are learned. However, it remains an open question what brain systems are important for this learning, particularly when learning is not tied explicitly to a decision about what task to perform. In this fMRI experiment, we parametrically manipulated the level of effort a task requires by increasing task switching frequency across six task contexts. In a scanned learning phase, participants implicitly learned about the task switching frequency in each context. In a subsequent test phase, participants made selections between pairs of these task contexts. We modeled learning within a reinforcement learning framework, and found that effort expectations that derived from task-switching probability and response time (RT) during learning were the best predictors of later choice behavior. Prediction errors (PE) from these two models were associated with FPN during distinct learning epochs. Specifically, PE derived from expected RT was most correlated with the fronto-parietal network early in learning, whereas PE derived from expected task switching frequency was correlated with the fronto-parietal network late in learning. These results suggest that multiple task-related factors are tracked by the brain while performing a task that can drive subsequent estimates of effort costs.

摘要

人们在权衡认知工作的收益与认知努力的成本。将认知努力成本的预期估计纳入决策制定的模型需要一个学习这些成本的机制。然而,当学习与执行某项任务的决策没有明确联系时,对于哪些大脑系统对于这种学习很重要,这仍然是一个悬而未决的问题。在这项 fMRI 实验中,我们通过在六个任务环境中增加任务切换频率来参数化地调整任务所需的努力水平。在扫描学习阶段,参与者在每个环境中隐式地学习任务切换频率。在随后的测试阶段,参与者在这些任务环境对之间进行选择。我们在强化学习框架内对学习进行建模,并发现源自学习过程中任务切换概率和反应时间(RT)的努力预期是后续选择行为的最佳预测指标。这两个模型的预测误差(PE)与不同学习时期的额顶网络(FPN)有关。具体来说,源自预期 RT 的 PE 与学习早期的额顶网络最相关,而源自预期任务切换频率的 PE 与学习后期的额顶网络相关。这些结果表明,大脑在执行一项任务时会跟踪多个与任务相关的因素,这些因素可以驱动后续的努力成本估计。

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