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类别学习中的记忆存储与提取过程。

Memory storage and retrieval processes in category learning.

作者信息

Estes W K

出版信息

J Exp Psychol Gen. 1986 Jun;115(2):155-74. doi: 10.1037//0096-3445.115.2.155.

Abstract

The detailed course of learning is studied for categorization tasks defined by independent or contingent probability distributions over the features of category exemplars. College-age subjects viewed sequences of bar charts that simulated symptom patterns and responded to each chart with a recognition and a categorization judgment. Fuzzy, probabilistically defined categories were learned relatively rapidly when individual features were correlated with category assignment, more slowly when only patterns carried category information. Limits of performance were suboptimal, evidently because of capacity limitations on judgmental processes as well as limitations on memory. Categorization proved systematically related to feature and exemplar probabilities, under different circumstances, and to similarity among exemplars of categories. Unique retrieval cues for exemplar patterns facilitated recognition but entered into categorization only at retention intervals within the range of short-term memory. The findings are interpreted within the framework of a general array model that yields both exemplar-similarity and feature-frequency models as special cases and provides quantitative accounts of the course of learning in each of the categorization tasks studied.

摘要

针对由类别示例特征上的独立或偶然概率分布所定义的分类任务,研究了详细的学习过程。大学年龄段的受试者观看了模拟症状模式的柱状图序列,并对每个图表做出识别和分类判断。当各个特征与类别分配相关时,模糊的、概率定义的类别学习相对较快;当只有模式携带类别信息时,则学习较慢。表现的局限性并非最优,显然是由于判断过程的能力限制以及记忆限制。在不同情况下,分类被证明与特征和示例概率以及类别示例之间的相似性系统相关。示例模式的独特检索线索促进了识别,但仅在短期记忆范围内的保留间隔时才进入分类。这些发现是在一个通用阵列模型的框架内进行解释的,该模型在特殊情况下产生示例相似性和特征频率模型,并对所研究的每个分类任务中的学习过程进行了定量描述。

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