Department of Psychology, University of Oregon.
J Exp Psychol Learn Mem Cogn. 2023 Dec;49(12):1923-1942. doi: 10.1037/xlm0001243. Epub 2023 May 25.
A major question for the study of learning and memory is how to tailor learning experiences to promote knowledge that generalizes to new situations. In two experiments, we used category learning as a representative domain to test two factors thought to influence the acquisition of conceptual knowledge: the number of training examples (set size) and the similarity of training examples to the category average (set coherence). Across participants, size and coherence of category training sets were varied in a fully crossed design. After training, participants demonstrated the breadth of their category knowledge by categorizing novel examples varying in their distance from the category center. Results showed better generalization following more coherent training sets, even when categorizing items furthest from the category center. Training set size had limited effects on performance. We also tested the types of representations underlying categorization decisions by fitting formal prototype and exemplar models. 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. In Experiment 1, low coherence training led to fewer participants relying on prototype representations, except when training length was extended. In Experiment 2, low coherence training led to chance performance and no clear representational strategy for nearly half of the participants. The results indicate that highlighting commonalities among exemplars during training facilitates learning and generalization and may also affect the types of concept representations that individuals form. (PsycInfo Database Record (c) 2023 APA, all rights reserved).
学习和记忆研究的一个主要问题是如何调整学习经验,以促进知识在新情况下的泛化。在两项实验中,我们使用类别学习作为一个代表性领域,来检验两个被认为会影响概念知识获取的因素:训练样本的数量(集合大小)和训练样本与类别平均值的相似性(集合一致性)。在参与者中,类别训练集的大小和一致性以完全交叉的设计进行变化。在训练后,参与者通过对与类别中心距离不同的新示例进行分类,展示了他们类别知识的广度。结果表明,在进行最远距离的分类时,一致性更高的训练集能够带来更好的泛化效果。尽管训练集的大小对表现有一定影响,但影响有限。我们还通过拟合形式原型和示例模型来测试分类决策背后的表示类型。原型模型基于类别中心趋势提出了抽象的类别表示,而示例模型则假设类别是由个体类别成员表示的。在实验 1 中,低一致性训练导致较少的参与者依赖原型表示,除非训练长度延长。在实验 2 中,低一致性训练导致近一半的参与者表现为随机,并且没有明确的表示策略。结果表明,在训练过程中突出示例之间的共同点可以促进学习和泛化,并且可能还会影响个人形成的概念表示类型。(PsycInfo 数据库记录(c)2023 APA,保留所有权利)。