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Cybernetics / Neuroscience / Learning / Cognitive science / Connectionism / Philosophy of artificial intelligence / Artificial neural network / Backpropagation / Constraint satisfaction problem / Computational neuroscience / Neural networks / Science
Date: 2010-10-25 15:41:37
Cybernetics
Neuroscience
Learning
Cognitive science
Connectionism
Philosophy of artificial intelligence
Artificial neural network
Backpropagation
Constraint satisfaction problem
Computational neuroscience
Neural networks
Science

Connectionism: Representation PHIL/PSYCH 256 INTRODUCTION TO COGNITIVE SCIENCE

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Source URL: cogsci.uwaterloo.ca

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