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Measuring category intuitiveness in unconstrained categorization tasks

Authors :
Amotz Perlman
John V. McDonnell
Peter Hines
Darren J. Edwards
Emmanuel M. Pothos
Todd M. Bailey
Kenneth J. Kurtz
Publication Year :
2011
Publisher :
Elsevier, 2011.

Abstract

What makes a category seem natural or intuitive? In this paper, an unsupervised categorization task was employed to examine observer agreement concerning the categorization of nine different stimulus sets. The stimulus sets were designed to capture different intuitions about classification structure. The main empirical index of category intuitiveness was the frequency of the preferred classification, for different stimulus sets. With 169 participants, and a within participants design, with some stimulus sets the most frequent classification was produced over 50 times and with others not more than two or three times. The main empirical finding was that cluster tightness was more important in determining category intuitiveness, than cluster separation. The results were considered in relation to the following models of unsupervised categorization: DIVA, the rational model, the simplicity model, SUSTAIN, an Unsupervised version of the Generalized Context Model (UGCM), and a simple geometric model based on similarity. DIVA, the geometric approach, SUSTAIN, and the UGCM provided good, though not perfect, fits. Overall, the present work highlights several theoretical and practical issues regarding unsupervised categorization and reveals weaknesses in some of the corresponding formal models.

Details

Language :
English
ISSN :
00100277
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....493302fc35bf6aff8cc1524f66737b1d