Conference Proceedings

The role of sampling assumptions in generalization with multiple categories

WK Vong, AT Hendrickson, A Perfors, DJ Navarro

Cooperative Minds Social Interaction and Group Dynamics Proceedings of the 35th Annual Meeting of the Cognitive Science Society Cogsci 2013 | Cognitive Science Society | Published : 2013

Abstract

The extent to which people learning categories generalize on the basis of observed instances should depend in part on their beliefs about how the instances were sampled from the world. Bayesian models of sampling have been successful in predicting the counter-intuitive finding that under certain situations generalization can decrease as more instances of a category are encountered. This has only been shown in tasks were instances are all from the same category, but contrasts with the predictions from most standard models of categorization (such as the Generalized Context Model) that predict when multiple categories exist, people are more likely to generalize to categories that have more inst..

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University of Melbourne Researchers

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Awarded by Australian Research Council


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