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Sampling over Nonuniform Distributions: A Neural Efficiency Account of the Primacy Effect in Statistical Learning

机译:非均匀分布抽样:统计学习中的首要效应的神经效率解释

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摘要

Successful knowledge acquisition requires a cognitive system that is both sensitive to statistical information and able to distinguish among multiple structures (i.e., to detect pattern shifts and form distinct representations). Extensive behavioral evidence has highlighted the importance of cues to structural change, demonstrating how, without them, learners fail to detect pattern shifts and are biased in favor of early experience. Here, we seek a neural account of the mechanism underpinning this primacy effect in learning. During fMRI scanning, adult participants were presented with two artificial languages: a familiar language (L1) on which they had been pretrained followed by a novel language (L2). The languages were composed of the same syllable inventory organized according to unique statistical structures. In the absence of cues to the transition between languages, posttest familiarity judgments revealed that learners on average more accurately segmented words from the familiar language compared with the novel one. Univariate activation and functional connectivity analyses showed that participants with the strongest learning of L1 had decreased recruitment of fronto-subcortical and posterior parietal regions, in addition to a dissociation between downstream regions and early auditory cortex. Participants with a strong new language learning capacity (i.e., higher L2 scores) showed the opposite trend. Thus, we suggest that a bias toward neural efficiency, particularly as manifested by decreased sampling from the environment, accounts for the primacy effect in learning. Potential implications of this hypothesis are discussed, including the possibility that “inefficient” learning systems may be more sensitive to structural changes in a dynamic environment.
机译:成功的知识获取需要一个既对统计信息敏感又能够在多个结构之间进行区分的认知系统(即,检测模式偏移并形成不同的表示形式)。大量的行为证据凸显了线索对结构变化的重要性,表明如果没有线索,学习者将如何无法发现模式转变并偏向于早期经验。在这里,我们寻求对这种学习中的首要效应基础的机制的神经学解释。在功能磁共振成像扫描期间,向成年参与者展示了两种人工语言:一种已经对其进行了预训练的熟悉语言(L1),然后是一种新颖语言(L2)。这些语言由根据唯一统计结构组织的相同音节表组成。在缺乏语言之间转换的线索的情况下,测试后的熟悉度判断表明,与小说语言相比,学习者平均更准确地从熟悉的语言中分割单词。单变量激活和功能连接性分析表明,除了下游区域与早期听觉皮层之间的分离外,对L1的了解最深的参与者还减少了额皮质下和顶叶后区域的募集。具有较强新语言学习能力(即较高的L2分数)的参与者呈现相反的趋势。因此,我们认为对神经效率的偏见,尤其是由减少的环境采样所表明的,是学习中的首要效应。讨论了该假设的潜在含义,包括“低效”学习系统可能对动态环境中的结构变化更敏感的可能性。

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