Werfel J, Xie X, Seung HS. (2005). Learning curves for stochastic gradient descent in linear feedforward networks. Neural computation. 17 [PubMed]

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Xie X, Seung HS, Werfel J. (2004). Learning curves for stochastic gradient descent in linear feedforward networks Advances in neural information processing systems. 16

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Fiete IR, Fee MS, Seung HS. (2007). Model of birdsong learning based on gradient estimation by dynamic perturbation of neural conductances. Journal of neurophysiology. 98 [PubMed]

Whittington JCR, Bogacz R. (2017). An Approximation of the Error Backpropagation Algorithm in a Predictive Coding Network with Local Hebbian Synaptic Plasticity. Neural computation. 29 [PubMed]

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