Mercurial > hg > camir-aes2014
view toolboxes/FullBNT-1.0.7/netlab3.3/rbffwd.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 [a, z, n2] = rbffwd(net, x) %RBFFWD Forward propagation through RBF network with linear outputs. % % Description % A = RBFFWD(NET, X) takes a network data structure NET and a matrix X % of input vectors and forward propagates the inputs through the % network to generate a matrix A of output vectors. Each row of X % corresponds to one input vector and each row of A contains the % corresponding output vector. The activation function that is used is % determined by NET.ACTFN. % % [A, Z, N2] = RBFFWD(NET, X) also generates a matrix Z of the hidden % unit activations where each row corresponds to one pattern. These % hidden unit activations represent the design matrix for the RBF. The % matrix N2 is the squared distances between each basis function centre % and each pattern in which each row corresponds to a data point. % % See also % RBF, RBFERR, RBFGRAD, RBFPAK, RBFTRAIN, RBFUNPAK % % Copyright (c) Ian T Nabney (1996-2001) % Check arguments for consistency errstring = consist(net, 'rbf', x); if ~isempty(errstring); error(errstring); end [ndata, data_dim] = size(x); % Calculate squared norm matrix, of dimension (ndata, ncentres) n2 = dist2(x, net.c); % Switch on activation function type switch net.actfn case 'gaussian' % Gaussian % Calculate width factors: net.wi contains squared widths wi2 = ones(ndata, 1) * (2 .* net.wi); % Now compute the activations z = exp(-(n2./wi2)); case 'tps' % Thin plate spline z = n2.*log(n2+(n2==0)); case 'r4logr' % r^4 log r z = n2.*n2.*log(n2+(n2==0)); otherwise error('Unknown activation function in rbffwd') end a = z*net.w2 + ones(ndata, 1)*net.b2;