Kuhn Gustav, Dienes Zoltán
Department of Psychology, University of Durham, South Road, Durham DH1 3LE, UK.
Cognition. 2008 Jan;106(1):184-206. doi: 10.1016/j.cognition.2007.01.003. Epub 2007 Mar 6.
This paper addresses the nature of the temporary storage buffer used in implicit or statistical learning. Kuhn and Dienes [Kuhn, G., and Dienes, Z. (2005). Implicit learning of nonlocal musical rules: implicitly learning more than chunks. Journal of Experimental Psychology-Learning Memory and Cognition, 31(6) 1417-1432] showed that people could implicitly learn a musical rule that was solely based on non-local dependencies. These results seriously challenge models of implicit learning that assume knowledge merely takes the form of linking adjacent elements (chunking). We compare two models that use a buffer to allow learning of long distance dependencies, the Simple Recurrent Network (SRN) and the memory buffer model. We argue that these models - as models of the mind - should not be evaluated simply by fitting them to human data but by determining the characteristic behaviour of each model. Simulations showed for the first time that the SRN could rapidly learn non-local dependencies. However, the characteristic performance of the memory buffer model rather than SRN more closely matched how people came to like different musical structures. We conclude that the SRN is more powerful than previous demonstrations have shown, but it's flexible learned buffer does not explain people's implicit learning (at least, the affective learning of musical structures) as well as fixed memory buffer models do.
本文探讨了在隐性或统计学习中使用的临时存储缓冲区的本质。库恩和迪内斯[库恩,G.,和迪内斯,Z.(2005年)。非局部音乐规则的隐性学习:隐性学习的不仅仅是组块。《实验心理学杂志——学习、记忆与认知》,31(6),1417 - 1432]表明,人们能够隐性学习一种仅基于非局部依赖关系的音乐规则。这些结果严重挑战了那些假设知识仅仅以连接相邻元素(组块)形式存在的隐性学习模型。我们比较了两种使用缓冲区来允许学习长距离依赖关系的模型,即简单循环网络(SRN)和记忆缓冲区模型。我们认为,作为心智模型,这些模型不应仅仅通过将它们与人类数据拟合来评估,而应通过确定每个模型的特征行为来评估。模拟首次表明,SRN能够快速学习非局部依赖关系。然而,记忆缓冲区模型的特征表现而非SRN的表现更紧密地匹配了人们如何开始喜欢不同音乐结构的情况。我们得出结论,SRN比之前的演示所显示的更强大,但其灵活的学习缓冲区在解释人们的隐性学习(至少是对音乐结构的情感学习)方面不如固定的记忆缓冲区模型。