Learning and generalization of within-category representations in a rule-based category structure

被引:0
|
作者
Shawn W. Ell
David B. Smith
Rose Deng
Sébastien Hélie
机构
[1] University of Maine,Department of Psychology, Graduate School of Biomedical Sciences and Engineering
[2] University of Maine,Department of Psychology
[3] Purdue University,Department of Psychological Sciences
来源
Attention, Perception, & Psychophysics | 2020年 / 82卷
关键词
Knowledge representation; Training methodology; Generalization; Category learning; Rule-guided behavior;
D O I
暂无
中图分类号
学科分类号
摘要
The task requirements during the course of category learning are critical for promoting within-category representations (e.g., correlational structure of the categories). Recent data suggest that for unidimensional rule-based structures, only inference training promotes the learning of within-category representations, and generalization across tasks is limited. It is unclear if this is a general feature of rule-based structures, or a limitation of unidimensional rule-based structures. The present work reports the results of three experiments further investigating this issue using an exclusive-or rule-based structure where successful performance depends upon attending to two stimulus dimensions. Participants were trained using classification or inference and were tested using inference. For both the classification and inference training conditions, within-category representations were learned and could be generalized at test (i.e., from classification to inference) and this result was dependent upon a congruence between local and global regions of the stimulus space. These data further support the idea that the task requirements during learning (i.e., a need to attend to multiple stimulus dimensions) are critical determinants of the category representations that are learned and the utility of these representations for supporting generalization in novel situations.
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页码:2448 / 2462
页数:14
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