Department of Psychology.
J Exp Psychol Learn Mem Cogn. 2020 Aug;46(8):1442-1464. doi: 10.1037/xlm0000824. Epub 2020 Feb 27.
Building conceptual knowledge that generalizes to novel situations is a key function of human memory. Category-learning paradigms have long been used to understand the mechanisms of knowledge generalization. In the present study, we tested the conditions that promote formation of new concepts. Participants underwent 1 of 6 training conditions that differed in the number of examples per category (set size) and their relative similarity to the category average (set coherence). Performance metrics included rates of category learning, ability to generalize categories to new items of varying similarity to prototypes, and recognition memory for individual examples. In categorization, high set coherence led to faster learning and better generalization, while set size had little effect. Recognition did not differ reliably among conditions. We also tested the nature of memory representations used for categorization and recognition decisions using quantitative prototype and exemplar models fit to behavioral responses. Prototype models posit abstract category representations based on the category's central tendency, whereas exemplar models posit that categories are represented by individual category members. Prototype strategy use during categorization increased with increasing set coherence, suggesting that coherent training sets facilitate extraction of commonalities within a category. We conclude that learning from a coherent set of examples is an efficient means of forming abstract knowledge that generalizes broadly. (PsycInfo Database Record (c) 2020 APA, all rights reserved).
构建能够推广到新情境的概念性知识是人类记忆的关键功能。类别学习范式长期以来一直被用于理解知识泛化的机制。在本研究中,我们测试了促进新概念形成的条件。参与者经历了 6 种训练条件中的 1 种,这些条件在每个类别中的示例数量(集合大小)及其与类别平均值的相对相似性(集合连贯性)方面有所不同。绩效指标包括类别学习的速度、将类别推广到与原型差异较大的新项的能力以及对单个示例的识别记忆。在分类中,高集合连贯性导致更快的学习和更好的泛化,而集合大小影响不大。在条件之间,识别没有可靠的差异。我们还使用针对行为反应进行定量原型和示例模型来测试用于分类和识别决策的记忆表示的性质。原型模型基于类别中心趋势假设抽象的类别表示,而示例模型则假设类别由单个类别成员表示。在分类过程中,原型策略的使用随着集合连贯性的增加而增加,这表明连贯的训练集有助于从类别中提取共性。我们得出结论,从一组连贯的示例中学习是形成广泛推广的抽象知识的有效手段。