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Statistics / Artificial intelligence / Machine learning / Cognition / Computational neuroscience / Concept learning / Learning theory / ImageNet / Artificial neural network / Supervised learning / Support vector machine / Probability distribution
Date: 2014-02-14 18:19:32
Statistics
Artificial intelligence
Machine learning
Cognition
Computational neuroscience
Concept learning
Learning theory
ImageNet
Artificial neural network
Supervised learning
Support vector machine
Probability distribution

Visual Concept Learning: Combining Machine Vision and Bayesian Generalization on Concept Hierarchies Yangqing Jia1 , Joshua Abbott2 , Joseph Austerweil3 , Thomas Griffiths2 , Trevor Darrell1 1 UC Berkeley EECS 2 Dept of

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Source URL: cocosci.berkeley.edu

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