心理学
刺激(心理学)
惊喜
事件相关电位
脑电图
感知
预测编码
感觉系统
认知心理学
视觉感受
神经科学
编码(社会科学)
沟通
数学
统计
作者
Carla den Ouden,Andong Zhou,Vinay Mepani,Gyula Kovács,Rufin Vogels,Daniel Feuerriegel
标识
DOI:10.1101/2023.04.05.535778
摘要
Abstract Humans and other animals can learn and exploit repeating patterns that occur within their environments. These learned patterns can be used to form expectations about future sensory events. Several influential predictive coding models have been proposed to explain how learned expectations influence the activity of stimulus-selective neurons in the visual system. These models specify reductions in neural response measures when expectations are fulfilled (termed expectation suppression) and increases following surprising sensory events. However, there is currently scant evidence for expectation suppression in the visual system when confounding factors are taken into account. Effects of surprise have been observed in blood oxygen level dependent (BOLD) signals, but not when using electrophysiological measures. To provide a strong test for expectation suppression and surprise effects we performed a predictive cueing experiment while recording electroencephalographic (EEG) data. Participants (n=48) learned cue-face associations during a training session and were then exposed to these cue-face pairs in a subsequent experiment. Using univariate analyses of face-evoked event-related potentials (ERPs) we did not observe any differences across expected (90% probability), neutral (50%) and surprising (10%) face conditions. Across these comparisons, Bayes factors consistently favoured the null hypothesis throughout the time-course of the stimulus-evoked response. When using multivariate pattern analysis we did not observe above-chance classification of expected and surprising face-evoked ERPs. By contrast, we found robust within– and across-trial stimulus repetition effects. Our findings do not support predictive coding-based accounts that specify reduced prediction error signalling when perceptual expectations are fulfilled. They instead highlight the utility of other types of predictive processing models that describe expectation-related phenomena in the visual system without recourse to prediction error signalling. Highlights – We performed a probabilistic cueing experiment while recording EEG. – We tested for effects of fulfilled expectations, surprise, and image repetition. – No expectation-related effects were observed. – Robust within– and across-trial repetition effects were found. – We did not find support for predictive coding models of expectation effects.
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