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The role of structural consistency between categories and attributes in hierarchical category learning

机译:类别和属性之间的结构一致性在分层类别学习中的作用

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This study investigated how consistency between categories and attributes determines attribute selection in hierarchical category learning. Participants learned six categories for which number and color were equally relevant attributes, followed by a transfer task, to test which attribute was used. Before that, half of them learned embedding higher-level categories for which numbers were likely to be used. Orthogonal to this factor, the hierarchical structure was made explicit for half of them by category labels. The results showed that participants used numbers in the prior learning, but that the use of numbers was inhibited in the subsequent six-category learning task. However, this inhibitory effect was reduced when the hierarchical structure was explicit. The pattern of results suggests that attribute selection is determined by structural consistency between categories and attributes, not be a prior use of an attribute.
机译:这项研究调查了类别和属性之间的一致性如何确定分层类别学习中的属性选择。参与者学习了六个类别,其中数字和颜色是同等相关的属性,然后是传输任务,以测试使用了哪个属性。在此之前,其中一半人学会了嵌入可能会使用数字的更高级别的类别。与这个因素正交,类别标签明确了其中一半的层次结构。结果表明,参与者在先前的学习中使用了数字,但是在随后的六类学习任务中却没有使用数字。但是,当层次结构明确时,这种抑制作用会降低。结果的模式表明,属性选择是由类别和属性之间的结构一致性决定的,而不是属性的先前使用。

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