view toolboxes/FullBNT-1.0.7/netlab3.3/mlperr.m @ 0:e9a9cd732c1e tip

first hg version after svn
author wolffd
date Tue, 10 Feb 2015 15:05:51 +0000
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function [e, edata, eprior] = mlperr(net, x, t)
%MLPERR	Evaluate error function for 2-layer network.
%
%	Description
%	E = MLPERR(NET, X, T) takes a network data structure NET together
%	with a matrix X of input vectors and a matrix T of target vectors,
%	and evaluates the error function E. The choice of error function
%	corresponds to the output unit activation function. Each row of X
%	corresponds to one input vector and each row of T corresponds to one
%	target vector.
%
%	[E, EDATA, EPRIOR] = MLPERR(NET, X, T) additionally returns the data
%	and prior components of the error, assuming a zero mean Gaussian
%	prior on the weights with inverse variance parameters ALPHA and BETA
%	taken from the network data structure NET.
%
%	See also
%	MLP, MLPPAK, MLPUNPAK, MLPFWD, MLPBKP, MLPGRAD
%

%	Copyright (c) Ian T Nabney (1996-2001)

% Check arguments for consistency
errstring = consist(net, 'mlp', x, t);
if ~isempty(errstring);
  error(errstring);
end
[y, z, a] = mlpfwd(net, x);

switch net.outfn

  case 'linear'        % Linear outputs
    edata = 0.5*sum(sum((y - t).^2));

  case 'logistic'      % Logistic outputs
    % Ensure that log(1-y) is computable: need exp(a) > eps
    maxcut = -log(eps);
    % Ensure that log(y) is computable
    mincut = -log(1/realmin - 1);
    a = min(a, maxcut);
    a = max(a, mincut);
    y = 1./(1 + exp(-a));
    edata = - sum(sum(t.*log(y) + (1 - t).*log(1 - y)));

  case 'softmax'       % Softmax outputs
    nout = size(a,2);
    % Ensure that sum(exp(a), 2) does not overflow
    maxcut = log(realmax) - log(nout);
    % Ensure that exp(a) > 0
    mincut = log(realmin);
    a = min(a, maxcut);
    a = max(a, mincut);
    temp = exp(a);
    y = temp./(sum(temp, 2)*ones(1,nout));
    % Ensure that log(y) is computable
    y(y<realmin) = realmin;
    edata = - sum(sum(t.*log(y)));

  otherwise
    error(['Unknown activation function ', net.outfn]);  
end
[e, edata, eprior] = errbayes(net, edata);