Theory Unification and Graphical Models in Human Categorization
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Categorization and Graphical Models -- 1 Psychological Theories of Categorization as Probabilistic Graphical Models
One natural representation of a category C is as a probability distribution (density) over the observed features. In this perspective, optimal categorization amounts to calculating the probability of that distribution given some novel observation. This paper focuses on probability distributions that can be represented using probabilistic graphical models, principally Bayesian networks and Marko...
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