Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/54277
Type: Conference paper
Title: Extending and testing the bayesian theory of generalization
Author: Navarro, D.
Lee, M.
Dry, M.
Schultz, B.
Citation: Proceedings of the 30th Annual meeting of the Cognitive Science Society, 2008: pp. 1746-1751
Publisher: Cognitive Science Society
Publisher Place: USA
Issue Date: 2008
Conference Name: Annual Meeting of the Cognitive Science Society (30th : 2008 : Washington DC)
Statement of
Responsibility: 
Daniel J. Navarro, Michael D. Lee, Matthew J. Dry and Benjamin Schultz
Abstract: We introduce a tractable family of Bayesian generalization functions. The family extends the basic model proposed by Tenenbaum and Griffiths (2001), allowing richer variation in sampling assumptions and prior beliefs. We derive analytic expressions for these generalization functions, and provide an explicit model for experimental data. We then present an experiment that tests the basic model predictions within the core domain of the theory, namely tasks that require people to make inductive judgments about whether some property holds for novel items. Analysis of the results illustrates the importance of describing variations in people’s prior beliefs and assumptions about how items are sampled and of having an explicit model for the entire task.
Keywords: generalization
induction
Bayesian models
Rights: © the authors
Appears in Collections:Aurora harvest
Environment Institute publications
Psychology publications

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