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基于程序学习的系统在知觉类别学习中的证据。

Evidence for a procedural-learning-based system in perceptual category learning.

作者信息

Maddox W Todd, Bohil Corey J, Ing A David

机构信息

University of Texas, Department of Psychology, Austin, TX 78712, USA.

出版信息

Psychon Bull Rev. 2004 Oct;11(5):945-52. doi: 10.3758/bf03196726.

Abstract

The consistency of the mapping from category to response location was investigated to test the hypothesis that abstract category labels are learned by the hypothesis testing system to solve rule-based tasks, whereas response position is learned by the procedural-learning system to solve information-integration tasks. Accuracy rates were examined to isolate global performance deficits, and model-based analyses were performed to identify the types of response strategies used by observers. A-B training (consistent mapping) led to more accurate responding relative to yes-no training (variable mapping) in the information-integration category learning task. Model-based analyses indicated that the yes-no accuracy decline was due to an increase in the use of rule-based strategies to solve the information-integration task. Yes-no training had no effect on the accuracy of responding or distribution of best-fitting models relative to A-B training in the rule-based category learning tasks. These results both provide support for a multiple-systems approach to category learning in which one system is procedural-learning-based and argue against the validity of single-system approaches.

摘要

研究了从类别到反应位置映射的一致性,以检验以下假设:抽象类别标签由假设检验系统学习以解决基于规则的任务,而反应位置由程序学习系统学习以解决信息整合任务。检查准确率以分离整体表现缺陷,并进行基于模型的分析以识别观察者使用的反应策略类型。在信息整合类别学习任务中,相对于是-否训练(可变映射),A-B训练(一致映射)导致更准确的反应。基于模型的分析表明,是-否准确率下降是由于在解决信息整合任务时使用基于规则的策略增加。相对于基于规则的类别学习任务中的A-B训练,是-否训练对反应准确率或最佳拟合模型的分布没有影响。这些结果既为类别学习的多系统方法提供了支持,其中一个系统基于程序学习,也反对单系统方法的有效性。

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