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Neural bases of learning and recognition of statistical regularities

机译:统计规律学习的神经基础与认识

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Statistical learning is a set of cognitive mechanisms allowing for extracting regularities from the environment and segmenting continuous sensory input into discrete units. The current study used functional magnetic resonance imaging (fMRI) (N = 25) in conjunction with an artificial language learning paradigm to provide new insight into the neural mechanisms of statistical learning, considering both the online process of extracting statistical regularities and the subsequent offline recognition of learned patterns. Notably, prior fMRI studies on statistical learning have not contrasted neural activation during the learning and recognition experimental phases. Here, we found that learning is supported by the superior temporal gyrus and the anterior cingulate gyrus, while subsequent recognition relied on the left inferior frontal gyrus. Besides, prior studies only assessed the brain response during the recognition of trained words relative to novel nonwords. Hence, a further key goal of this study was to understand how the brain supports recognition of discrete constituents from the continuous input versus recognition of mere statistical structure that is used to build new constituents that are statistically congruent with the ones from the input. Behaviorally, recognition performance indicated that statistically congruent novel tokens were less likely to be endorsed as parts of the familiar environment than discrete constituents. fMRI data showed that the left intraparietal sulcus and angular gyrus support the recognition of old discrete constituents relative to novel statistically congruent items, likely reflecting an additional contribution from memory representations for trained items.
机译:统计学习是一组认知机制,允许从环境中提取规则并将连续的感觉输入分段为分立单元。目前的研究使用功能磁共振成像(FMRI)(N = 25)与人工语言学习范例结合,以便为统计学习的神经机制提供新的洞察,考虑到提取统计规则的在线过程和随后的离线识别学习模式。值得注意的是,在学习和识别实验阶段期间,对统计学习的先前FMRI研究没有对比神经激活。在这里,我们发现学习是由较好的颞克鲁斯和前铰接回形物支持的,而随后的识别依赖于左下额相回流。此外,目前的研究仅评估了在相对于新型非单词的训练有素的单词中进行了脑响应。因此,本研究的另一个关键目标是了解大脑如何支持识别来自连续投入的离散成分,仅用于构建与从投入中的统计方式全致的新成分建立新的成分。行为地,识别性能表明,统计上一致的新颖令牌不太可能批准熟悉环境的部分而不是离散的成分。 FMRI数据表明,左内沟和角度回流相对于新颖的统计上全体物品,支持旧离散成分的识别,这可能反映了培训项目的记忆陈述的额外贡献。

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