School of Psychology, University of Western Australia, Crawley, W.A. 6009, Australia.
J Exp Psychol Learn Mem Cogn. 2011 May;37(3):720-38. doi: 10.1037/a0022639.
Working memory is crucial for many higher-level cognitive functions, ranging from mental arithmetic to reasoning and problem solving. Likewise, the ability to learn and categorize novel concepts forms an indispensable part of human cognition. However, very little is known about the relationship between working memory and categorization, and modeling in category learning has thus far been largely uninformed by knowledge about people's memory processes. This article reports a large study (N = 113) that related people's working memory capacity (WMC) to their category-learning performance using the 6 problem types of Shepard, Hovland, and Jenkins (1961). Structural equation modeling revealed a strong relationship between WMC and category learning, with a single latent variable accommodating performance on all 6 problems. A model of categorization (the Attention Learning COVEring map, ALCOVE; Kruschke, 1992) was fit to the individual data and a single latent variable was sufficient to capture the variation among associative learning parameters across all problems. The data and modeling suggest that working memory mediates category learning across a broad range of tasks.
工作记忆对于许多高级认知功能至关重要,包括心算、推理和解决问题。同样,学习和分类新概念的能力是人类认知不可或缺的一部分。然而,关于工作记忆和分类的关系,以及类别学习中的建模,到目前为止,人们对记忆过程的了解还很少。本文报道了一项大型研究(N=113),该研究使用 Shepard、Hovland 和 Jenkins(1961)的 6 种问题类型,将人们的工作记忆容量(WMC)与他们的类别学习表现联系起来。结构方程建模揭示了 WMC 和类别学习之间的强关系,单个潜在变量可以容纳所有 6 个问题的表现。对分类模型(注意力学习覆盖图,ALCOVE;Kruschke,1992)进行了个体数据拟合,并且单个潜在变量足以捕获所有问题中联想学习参数的变化。数据和建模表明,工作记忆在广泛的任务中介导了类别学习。