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Predicting Known Sentences: Neural Basis of Proverb Reading Using Non-parametric Statistical Testing and Mixed-Effects Models

机译:预测已知句子:使用非参数统计检验和混合效应模型的谚语阅读的神经基础

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摘要

Predictions of future events play an important role in daily activities, such as visual search, listening, or reading. They allow us to plan future actions and to anticipate their outcomes. Reading, a natural, commonly studied behavior, could shed light over the brain processes that underlie those prediction mechanisms. We hypothesized that different mechanisms must lead predictions along common sentences and proverbs. The former ones are more based on semantic and syntactic cues, and the last ones are almost purely based on long-term memory. Here we show that the modulation of the N400 by Cloze-Task Predictability is strongly present in common sentences, but not in proverbs. Moreover, we present a novel combination of linear mixed models to account for multiple variables, and a cluster-based permutation procedure to control for multiple comparisons. Our results suggest that different prediction mechanisms are present during reading.
机译:对未来事件的预测在日常活动(例如视觉搜索,收听或阅读)中起着重要作用。它们使我们能够计划未来的行动并预期其结果。阅读是一种自然的,经常被研究的行为,可以揭示那些预测机制背后的大脑过程。我们假设,不同的机制必须导致常见句子和谚语的预测。前者更多地基于语义和句法提示,而后者几乎完全基于长期记忆。在这里,我们证明了Cloze-Task可预测性对N400的调制在常见句子中很明显,而在谚语中却没有。此外,我们提出了一种线性混合模型的新颖组合,以解决多个变量问题,并基于聚类的置换过程来控制多个比较。我们的结果表明阅读过程中存在不同的预测机制。

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