| Literature DB >> 8151279 |
John P Clapper1, Gordon H Bower.
Abstract
This research aimed to discriminate between 2 general approaches to unsupervised category learning, one based on learning explicit correlational rules or associations within a stimulus domain (autocorrelation) and the other based on inventing separate categories to capture the correlational structure of the domain (category invention). An "attribute-listing" paradigm was used to index unsupervised learning in 3 experiments. Each experiment manipulated the order in which instances from 2 different categories were presented and evaluated the effects of this manipulation in terms of the 2 competing theoretical approaches to unsupervised learning. Strong evidence was found for the use by Ss of a discrete category invention process to learn the categories in these experiments. These results also suggest that attribute listing may be a valuable method for future investigations of unsupervised category learning.Mesh:
Year: 1994 PMID: 8151279 DOI: 10.1037//0278-7393.20.2.443
Source DB: PubMed Journal: J Exp Psychol Learn Mem Cogn ISSN: 0278-7393 Impact factor: 3.051