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首页> 外文期刊>Journal of experimental psychology. Learning, memory, and cognition >Learning in Complex, Multi-Component Cognitive Systems: Different Learning Challenges Within the Same System
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Learning in Complex, Multi-Component Cognitive Systems: Different Learning Challenges Within the Same System

机译:在复杂的多组件认知系统中学习:同一系统中的不同学习挑战

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Using word learning as an example of a complex system, we investigated how differences in the structure of the subcomponents in which learning occurs can have significant consequences for the challenge of integrating new information within such systems. Learning a new word involves integrating information into the two key stages/subcomponents of processing within the word production system. In the first stage, multiple semantic features are mapped onto a single word. Conversely, in the second stage, a single word is mapped onto multiple segmental features. We tested whether the unitary goal of word learning leads to different local outcomes in these two stages because of their reversed mapping patterns. Neurotypical individuals (N = 17) learned names and semantic features for pictures of unfamiliar objects presented in semantically related, segmentally related and unrelated blocks. Both similarity types interfered with word learning. However, feature learning was differentially affected within the two subcomponents of word production. Semantic similarity facilitated learning distinctive semantic features (i.e., features unique to each item), whereas segmental similarity facilitated learning shared segmental features (i.e., features common to several items in a block). These results are compatible with an incremental learning model in which learning not only strengthens certain associations but also weakens others according to the local goals of each subcomponent. More generally, they demonstrate that the same overall learning goal can lead to opposite learning outcomes in the subcomponents of a complex system. The general principles uncovered may extend beyond word learning to other complex systems with multiple subcomponents.
机译:使用Word学习作为复杂系统的示例,我们调查了在哪些学习发生的子组件结构中的差异可能对整合此类系统内的新信息的挑战产生重大影响。学习新单词涉及将信息集成到Word生产系统中的处理的两个关键阶段/子组件中。在第一阶段,将多个语义特征映射到单个单词上。相反,在第二阶段,单个单词映射到多个分段特征上。我们测试了Word学习的单一目标是否导致这两个阶段的不同局部结果,因为它们的倒置模式。神经典型的个人(n = 17)学习了在语义相关,分段相关和不相关的块中呈现的不熟悉对象的图片的姓名和语义特征。两种相似类型干扰了Word学习。然而,特征学习在Word生产的两个子组件中差异化。语义相似性促进了学习独特的语义特征(即每个项目的特征),而分段相似度促进了学习共享分段特征(即,块中的几个项目共同的功能)。这些结果与增量学习模型兼容,其中学习不仅加强某些关联,而且还根据每个子组件的当地目标削弱他人。更一般地说,他们表明相同的整体学习目标可能导致复杂系统的子组件中的相反学习结果。未发现的一般原则可能会扩展到具有多个子组件的其他复杂系统的单词学习。

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