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Statistics / Science / Artificial neural network / Recurrent neural network / Hydrological modelling / Hydrology / Multilayer perceptron / Forecasting / Neural Lab / Neural networks / Computational neuroscience / Cybernetics
Date: 2010-11-19 09:00:54
Statistics
Science
Artificial neural network
Recurrent neural network
Hydrological modelling
Hydrology
Multilayer perceptron
Forecasting
Neural Lab
Neural networks
Computational neuroscience
Cybernetics

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