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Density functional theory / Hybrid functional / Neuroscience / Physics / Cybernetics / Gaussian / Synaptic weight / Backpropagation / Neural networks / Science / Computational neuroscience
Date: 2010-12-19 08:35:06
Density functional theory
Hybrid functional
Neuroscience
Physics
Cybernetics
Gaussian
Synaptic weight
Backpropagation
Neural networks
Science
Computational neuroscience

doi:j.cplett

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