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Trial-by-Trial Fluctuations in the Event-Related Electroencephalogram Reflect Dynamic Changes in the Degree of Surprise

机译:事件相关脑电图的逐次波动反映了惊喜程度的动态变化

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摘要

The P300 component of the human event-related brain potential has often been linked to the processing of rare, surprising events. However, the formal computational processes underlying the generation of the P300 are not well known. Here, we formulate a simple model of trial-by-trial learning of stimulus probabilities based on Information Theory. Specifically, we modeled the surprise associated with the occurrence of a visual stimulus to provide a formal quantification of the “subjective probability” associated with an event. Subjects performed a choice reaction time task, while we recorded their brain responses using electroencephalography (EEG). In each of 12 blocks, the probabilities of stimulus occurrence were changed, thereby creating sequences of trials with low, medium, and high predictability. Trial-by-trial variations in the P300 component were best explained by a model of stimulus-bound surprise. This model accounted for the data better than a categorical model that parametrically encoded the stimulus identity, or an alternative model of surprise based on the Kullback–Leibler divergence. The present data demonstrate that trial-by-trial changes in P300 can be explained by predictions made by an ideal observer keeping track of the probabilities of possible events. This provides evidence for theories proposing a direct link between the P300 component and the processing of surprising events. Furthermore, this study demonstrates how model-based analyses can be used to explain significant proportions of the trial-by-trial changes in human event-related EEG responses.
机译:人类事件相关脑潜能的P300成分通常与罕见事件的处理有关。但是,P300产生的形式化计算过程并不为人所知。在这里,我们基于信息理论,建立了一个简单的尝试式学习刺激概率的模型。具体而言,我们对与视觉刺激的发生相关的惊喜建模,以提供与事件相关的“主观概率”的形式化量化。受试者执行了选择反应时间任务,而我们使用脑电图(EEG)记录了他们的大脑反应。在12个区块中的每个区块中,刺激发生的概率都发生了变化,从而创建了具有低,中和高可预测性的试验序列。 P300组件的逐次试验变化最好通过刺激约束的惊喜模型来解释。该模型比参数化编码刺激身份的分类模型或基于Kullback-Leibler散度的替代性意外模型更好地解释了数据。本数据表明,P300的逐次试验更改可以通过理想观察者跟踪可能发生的事件的概率来进行解释。这为提出P300组件与意外事件的处理之间的直接联系的理论提供了证据。此外,这项研究证明了如何使用基于模型的分析来解释与人类事件相关的脑电图应答中的逐次试验变化的重要部分。

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