Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/58419
Type: Conference paper
Title: Learning to learn categories
Author: Perfors, A.
Tenenbaum, J.
Citation: Proceedings of the 31st Annual Conference of the Cognitive Science Society (COGSCI 2009): pp.136-141
Publisher: Cognitive Science Society
Publisher Place: Netherlands
Issue Date: 2009
ISBN: 9780976831853
Conference Name: Annual Meeting of the Cognitive Science Society (31st : 2009 : Amsterdam)
Statement of
Responsibility: 
Amy Perfors and Joshua Tenenbaum
Abstract: Learning to categorize objects in the world is more than just learning the specific facts that characterize individual categories. We can also learn more abstract knowledge about how categories in a domain tend to be organized -- extending even to categories that we've never seen examples of. These abstractions allow us to learn and generalize examples of new categories much more quickly than if we had to start from scratch with each category encountered. We present a model for "learning to learn" to categorize in this way, and demonstrate that it predicts human behavior in a novel experimental task. Both human and model performance suggest that higher-order and lower-order generalizations can be equally as easy to acquire. In addition, although both people and the model show impaired generalization when categories have to be inferred compared to when they don't, human performance is more strongly affected. We discuss the implications of these findings.
Keywords: overhypotheses
word learning
Bayesian modelling
shape bias
Rights: © Author
Published version: http://csjarchive.cogsci.rpi.edu/Proceedings/2009/papers/26/index.html
Appears in Collections:Aurora harvest
Psychology publications

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