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Date: 2006-02-27 18:10:48Mathematics Neuroscience Backpropagation Artificial neural network Automatic differentiation Multilayer perceptron Perceptron Derivative Feedforward neural network Neural networks Computational neuroscience Cybernetics | Backwards Differentiation in AD and Neural Nets: Past Links and New Opportunities Paul J. Werbos1 Abstract Backwards calculation of derivatives – sometimes called the reverse mode, the full adjoint method, or backpropaAdd to Reading ListSource URL: www.werbos.comDownload Document from Source WebsiteFile Size: 173,21 KBShare Document on Facebook |
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