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在联想学习过程中对空间注意力的引导:可预测性和学习意图的作用。

Guidance of spatial attention during associative learning: Contributions of predictability and intention to learn.

机构信息

SCALab, UMR CNRS 9193, Université de Lille, Lille, France.

Department of Psychology, University of Arizona, Tucson, Arizona, USA.

出版信息

Psychophysiology. 2018 Aug;55(8):e13077. doi: 10.1111/psyp.13077. Epub 2018 Mar 23.

Abstract

Expectations of an event can facilitate its neural processing. One of the ways we build expectations is through associative learning. Interestingly, the learning of contingencies between events can also occur without intention. Here, we study feature-based attention during associative learning, by asking how a learned association between a cue and a target outcome impacts the attention allocated to this outcome. Moreover, we investigate attention in learning depending on the intention to learn the association. We used an associative learning paradigm where we manipulated outcome predictability and intention to learn an association within streams of cue-target outcome visual stimuli, while stimulus characteristics and probability were held constant. In order to measure the event-related component N2pc, widely recognized to reflect allocation of spatial attention, every outcome was embedded among distractors. Importantly, the location of the target outcome could not be anticipated. We found that predictable target outcomes showed an increased spatial attention as indexed by a greater N2pc component. A later component, the P300, was sensitive to the intention to learn the association between the cue and the target outcome. The current study confirms the remarkable ability of the brain to extract and update predictive information, in accordance with a predictive-coding model of brain function. Associative learning can guide a visual search and shape covert attentional selection in our rich environments.

摘要

人们对事件的预期可以促进其神经处理。我们建立预期的方式之一是通过联想学习。有趣的是,事件之间的偶然性学习也可以在无意识的情况下发生。在这里,我们通过研究联想学习期间的基于特征的注意力,来研究在学习线索和目标结果之间的关联如何影响对该结果的注意力分配。此外,我们还根据学习关联的意图来研究学习中的注意力。我们使用了一种联想学习范式,在该范式中,我们在线索-目标结果视觉刺激流中操纵结果的可预测性和学习关联的意图,同时保持刺激特征和概率不变。为了测量反映空间注意力分配的事件相关成分 N2pc,我们在每个结果中嵌入了分心物。重要的是,无法预测目标结果的位置。我们发现,可预测的目标结果表现出更大的空间注意力,这表现为 N2pc 成分更大。稍后的成分 P300 对学习线索和目标结果之间关联的意图敏感。本研究证实了大脑根据大脑功能的预测编码模型提取和更新预测信息的非凡能力。联想学习可以引导视觉搜索,并在我们丰富的环境中塑造隐蔽的注意力选择。

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