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Mathematical optimization / Cybernetics / Mathematics / Computational neuroscience / Econometrics / Recurrent neural network / Genetic algorithm / Genetic programming / Algorithm / Neural networks / Applied mathematics / Science
Date: 2006-11-17 21:18:14
Mathematical optimization
Cybernetics
Mathematics
Computational neuroscience
Econometrics
Recurrent neural network
Genetic algorithm
Genetic programming
Algorithm
Neural networks
Applied mathematics
Science

GENETIC GENERATION OF BOTH THE WEIGHTS AND ARCHITECTURE FOR A NEURAL NETWORK John R. Koza Computer Science Department Stanford University

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