Mercurial > hg > camir-aes2014
view toolboxes/FullBNT-1.0.7/netlab3.3/mlpbkp.m @ 0:e9a9cd732c1e tip
first hg version after svn
author | wolffd |
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date | Tue, 10 Feb 2015 15:05:51 +0000 |
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function g = mlpbkp(net, x, z, deltas) %MLPBKP Backpropagate gradient of error function for 2-layer network. % % Description % G = MLPBKP(NET, X, Z, DELTAS) takes a network data structure NET % together with a matrix X of input vectors, a matrix Z of hidden unit % activations, and a matrix DELTAS of the gradient of the error % function with respect to the values of the output units (i.e. the % summed inputs to the output units, before the activation function is % applied). The return value is the gradient G of the error function % with respect to the network weights. Each row of X corresponds to one % input vector. % % This function is provided so that the common backpropagation % algorithm can be used by multi-layer perceptron network models to % compute gradients for mixture density networks as well as standard % error functions. % % See also % MLP, MLPGRAD, MLPDERIV, MDNGRAD % % Copyright (c) Ian T Nabney (1996-2001) % Evaluate second-layer gradients. gw2 = z'*deltas; gb2 = sum(deltas, 1); % Now do the backpropagation. delhid = deltas*net.w2'; delhid = delhid.*(1.0 - z.*z); % Finally, evaluate the first-layer gradients. gw1 = x'*delhid; gb1 = sum(delhid, 1); g = [gw1(:)', gb1, gw2(:)', gb2];