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关系模式的归纳:推理和复杂学习中的共同过程。

Induction of relational schemas: common processes in reasoning and complex learning.

作者信息

Halford G S, Bain J D, Maybery M T, Andrews G

机构信息

Department of Psychology, University of Queensland, Australia.

出版信息

Cogn Psychol. 1998 Apr;35(3):201-45. doi: 10.1006/cogp.1998.0679.

Abstract

Five experiments were performed to test whether participants induced a coherent representation of the structure of a task, called a relational schema, from specific instances. Properties of a relational schema include: An explicit symbol for a relation, a binding that preserves the truth of a relation, potential for higher-order relations, omnidirectional access, potential for transfer between isomorphs, and ability to predict unseen items in isomorphic problems. However relational schemas are not necessarily coded in abstract form. Predictions from relational schema theory were contrasted with predictions from configural learning and other nonstructural theories in five experiments in which participants were taught a structure comprised of a set of initial-state,operator-->end-state instances. The initial-state,operator pairs were presented and participants had to predict the correct end-state. Induction of a relational schema was achieved efficiently by adult participants as indicated by ability to predict items of a new isomorphic problem. The relational schemas induced showed the omnidirectional access property, there was efficient transfer to isomorphs, and structural coherence had a powerful effect on learning. The "learning to learn" effect traditionally associated with the learning set literature was observed, and the long-standing enigma of learning set acquisition is explained by a model composed of relational schema induction and structure mapping. Performance was better after reversal of operators than after shift to an alternate structure, even though the latter entailed more overlap with previously learned tasks in terms of the number of configural associations that were preserved. An explanation for the reversal shift phenomenon in terms of induction and mapping of a relational schema is proposed. The five experiments provided evidence supporting predictions from relational schema theory, and no evidence was found for configural or nonstructural learning theories.

摘要

进行了五项实验,以测试参与者是否能从特定实例中归纳出任务结构的连贯表征,即关系模式。关系模式的属性包括:关系的明确符号、保持关系真值的绑定、高阶关系的可能性、全向访问、同构体之间转移的可能性,以及预测同构问题中未见项目的能力。然而,关系模式不一定以抽象形式编码。在五项实验中,将关系模式理论的预测与构型学习和其他非结构理论的预测进行了对比。在这些实验中,向参与者传授了由一组初始状态、操作符→结束状态实例组成的结构。呈现初始状态和操作符对,参与者必须预测正确的结束状态。成年参与者能够有效地归纳出关系模式,这表现为他们能够预测新同构问题中的项目。所归纳出的关系模式具有全向访问属性,能够有效地转移到同构体,并且结构连贯性对学习有强大的影响。观察到了传统上与学习集文献相关的“学会学习”效应,并且用一个由关系模式归纳和结构映射组成的模型解释了学习集习得这一长期存在的谜团。尽管从保留的构型关联数量来看,后者与先前学习的任务有更多重叠,但在操作符反转后,表现比切换到替代结构后更好。提出了一种用关系模式的归纳和映射来解释反转转移现象的解释。这五项实验提供了支持关系模式理论预测的证据,未发现支持构型或非结构学习理论的证据。

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