语义惊喜预测N400大脑潜能

Q4 Neuroscience
Alma Lindborg , Lea Musiolek , Dirk Ostwald , Milena Rabovsky
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引用次数: 0

摘要

语言是人类生活的核心;然而,我们的大脑是如何从语言中获得意义的,目前还不太清楚。在线意义相关处理的一种常见的电生理测量方法是N400分量,其计算基础仍有争议。在这里,我们测试了最近提出的关于N400的计算显式假设之一,即它反映了在给定上下文中当前刺激的语义特征的概率表示方面的惊讶。我们设计了一个贝叶斯序列学习器模型,在一个类似语义怪人的流动范式实验中,推导出一次又一次的语义惊喜,其中来自不同语义类别的单个名词以序列形式呈现。使用来自40名受试者的实验数据,我们发现模型衍生的语义惊喜显著预测了N400振幅,大大优于非概率基线模型。通过研究这种效应的时间特征,我们发现语义惊喜对EEG的影响仅限于N400的时间窗口。此外,将语义惊喜效应的拓扑结构与预测词与未预测词的传统ERP分析进行比较,我们发现语义惊喜与N400拓扑结构紧密复制。我们的结果有力地证明了概率语义表示在引发N400和一般语言理解中的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic surprise predicts the N400 brain potential

Language is central to human life; however, how our brains derive meaning from language is still not well understood. A commonly studied electrophysiological measure of on-line meaning related processing is the N400 component, the computational basis of which is still actively debated. Here, we test one of the recently proposed, computationally explicit hypotheses on the N400 – namely, that it reflects surprise with respect to a probabilistic representation of the semantic features of the current stimulus in a given context. We devise a Bayesian sequential learner model to derive trial-by-trial semantic surprise in a semantic oddball like roving paradigm experiment, where single nouns from different semantic categories are presented in sequences. Using experimental data from 40 subjects, we show that model-derived semantic surprise significantly predicts the N400 amplitude, substantially outperforming a non-probabilistic baseline model. Investigating the temporal signature of the effect, we find that the effect of semantic surprise on the EEG is restricted to the time window of the N400. Moreover, comparing the topography of the semantic surprise effect to a conventional ERP analysis of predicted vs. unpredicted words, we find that the semantic surprise closely replicates the N400 topography. Our results make a strong case for the role of probabilistic semantic representations in eliciting the N400, and in language comprehension in general.

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来源期刊
Neuroimage. Reports
Neuroimage. Reports Neuroscience (General)
CiteScore
1.90
自引率
0.00%
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0
审稿时长
87 days
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