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首页> 外文期刊>Cerebral cortex >Learning the Exception to the Rule; Model-Based fMRl ieweals Specialized Representations for Surprising Category Members
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Learning the Exception to the Rule; Model-Based fMRl ieweals Specialized Representations for Surprising Category Members

机译:学习规则的例外;基于模型的fMRl融合了令人惊讶的类别成员的专业表示

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摘要

Category knowledge can be explicit, yet not conform to a perfect rule. For example, a child may acquire the rule "If it has wings, then it is a bird," but then must account for exceptions to this rule, such as bats. The current study explored the neurobiological basis of rule-plus-exception learning by using quantitative predictions from a category learning model, SUSTAIN, to analyze behavioral and functional magnetic resonance imaging (fMRl) data. SUSTAIN predicts that exceptions require formation of specialized representations to distinguish exceptions from rule-following items in memory. By incorporating quantitative trial-by-trial predictions from SUSTAIN directly into fMRl analyses, we observed medial temporal lobe (MTL) activation consistent with 2 predicted psychological processes that enable exception learning: item recognition and error correction. SUSTAIN explains how these processes vary in the MTL across learning trials as category knowledge is acquired. Importantly, MTL engagement during exception teaming was not captured by an alternate exemplar-based model of category learning or by standard contrasts comparing exception and rule-following items. The current findings thus provide a well-specified theory for the role of the MTL in category learning, where the MTL plays an important role in forming specialized category representations appropriate for the learning context.
机译:类别知识可以是明确的,但不符合完美的规则。例如,儿童可能获得规则“如果它有翅膀,那么它就是鸟”,但是必须考虑到该规则的例外,例如蝙蝠。当前的研究通过使用来自类别学习模型SUSTAIN的定量预测来分析规则和例外学习的神经生物学基础,以分析行为和功能磁共振成像(fMR1)数据。 SUSTAIN预测异常需要形成专门的表示形式,以将异常与内存中遵循规则的项目区分开。通过将来自SUSTAIN的定量的逐项试验预测直接整合到fMR1分析中,我们观察到内侧颞叶(MTL)激活与2个能够启用异常学习的预测心理过程一致:项目识别和错误纠正。 SUSTAIN解释说,随着学习类别知识的发展,这些过程在学习试验中的MTL中如何变化。重要的是,异常团队合作过程中的MTL参与没有通过基于样例的替代类别学习模型或通过比较异常和规则遵循项的标准对比来捕获。因此,当前的发现为MTL在类别学习中的作用提供了详细说明的理论,其中MTL在形成适合于学习环境的专业类别表示中起着重要作用。

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