Detecting Intra- and Inter-categorical Structure in Semantic Concepts Using HICLAS
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In this paper, we investigate the hypothesis that people use feature correlations to detect inter- and intra-categorical structure. More specifically, we study whether it is plausible that people strategically look for a particular type of feature co-occurrence that can be represented in terms of rectangular patterns of 1s and 0s in a binary feature by exemplar matrix. Analyzing data from the Animal and Artifact domains, we show that the HICLAS model, which looks for such rectangular structure and which therefore models a cognitive capacity of detecting feature co-occurence in large data bases of features characterizing exemplars, succeeds rather well in predicting inter- and intra-categorical structure.
On domain differences in categorization and context variety.
Verheyen S, Heussen D, Storms G Mem Cognit. 2011; 39(7):1290-300.
PMID: 21538180 DOI: 10.3758/s13421-011-0102-3.