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Computational EEG modelling of decision making under ambiguity reveals spatio-temporal dynamics of outcome evaluation

机译:歧义下决策的计算EEG建模揭示了结果评估的时空动态

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Complex human cognition, such as decision-making under ambiguity, is reflected in dynamic spatio-temporal activity in the brain. Here, we combined event-related potentials with computational modelling of the time course of decision-making and outcome evaluation during the Iowa Gambling Task. Measures of choice probability generated using the Prospect Valence Learning Delta (PVL-Delta) model, in addition to objective trial outcomes (outcome magnitude and valence), were applied as regressors in a general linear model of the EEG signal. The resulting three-dimensional spatio-temporal characterization of task related neural dynamics demonstrated that outcome valence, outcome magnitude, and PVL-Delta choice probability were expressed in distinctly separate event related potentials. Our findings showed that the P3 component was associated with an experience-based measure of outcome expectancy. (C) 2016 Elsevier B.V. All rights reserved.
机译:复杂的人类认知,例如歧义下的决策,反映在大脑中的动态时空活动中。 在这里,我们将事件相关的潜力组合在一起的IOWA赌博任务期间决策和结果评估的时间过程计算建模。 使用展望价学习Δ(PVL-DELTA)模型产生的选择概率的测量,除了客观的试验结果(结果幅度和价值)之外,在EEG信号的一般线性模型中被应用于回归。 由此产生的任务相关神经动力学的三维时空表征证明了结果,结果幅度和PVL-DELTA选择概率以明显的不同事件相关电位表示。 我们的研究结果表明,P3成分与基于经验的结果预期率的衡量标准相关。 (c)2016年Elsevier B.v.保留所有权利。

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