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Computational statistics / Cybernetics / Science / Neuroscience / Artificial neural network / Spiking neural network / Reinforcement learning / Spike-timing-dependent plasticity / Backpropagation / Neural networks / Machine learning / Computational neuroscience
Date: 2011-05-12 09:25:10
Computational statistics
Cybernetics
Science
Neuroscience
Artificial neural network
Spiking neural network
Reinforcement learning
Spike-timing-dependent plasticity
Backpropagation
Neural networks
Machine learning
Computational neuroscience

Call for Participation: Beyond correlations: Developments in supervised learning algorithms for spiking neural networks Workshop at ICANN 2011, Helsinki, ,

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