COMBINING EXEMPLAR-BASED CATEGORY REPRESENTATIONS AND CONNECTIONIST LEARNING RULES

被引:149
作者
NOSOFSKY, RM
KRUSCHKE, JK
MCKINLEY, SC
机构
[1] Department of Psychology, Indiana University, Bloomington
关键词
D O I
10.1037/0278-7393.18.2.211
中图分类号
B84 [心理学];
学科分类号
04 ; 0402 ;
摘要
Adaptive network and exemplar-similarity models were compared on their ability to predict category learning and transfer data. An exemplar-based network (Kruschke, 1990a, 1990b, 1992) that combines key aspects of both modeling approaches was also tested. The exemplar-based network incorporates an exemplar-based category representation in which exemplars become associated to categories through the same error-driven, interactive learning rules that are assumed in standard adaptive networks. Experiment 1, which partially replicated and extended the probabilistic classification learning paradigm of Gluck and Bower (1988a), demonstrated the importance of an error-driven learning rule. Experiment 2, which extended the classification learning paradigm of Medin and Schaffer (1978) that discriminated between exemplar and prototype models, demonstrated the importance of an exemplar-based category representation. Only the exemplar-based network accounted for all the major qualitative phenomena; it also achieved good quantitative predictions of the learning and transfer data in both experiments.
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页码:211 / 233
页数:23
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