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I am undertaking a classification task, but face the problem that when I run my patterns over the trained net, I only get a +ve classification (equiv to logsig always > 0.5), whereas I expect tansig should be returning -ve values frequently when I apply the trained net to the original patterns (last line of code below).

All the normalization is taking place automatically by the builtin functions, and the results are shown below.

summary of my results


[patterns,targets] = getData();
patterns = patterns';  % 11x3078
targets = targets';    %  1x3078

learner = 'trainlm'; % 'trainlm', 'trainbr', 'trainscg'
hiddenSizes = 5;  % default is 10
net = feedforwardnet(hiddenSizes, learner);

% inps = net.inputs{1}.processFcns;
% default for hidden layers is 'tansig'
net.layers{1}.transferFcn = 'tansig';
% default for hidden layers is 'purelin'
% tansig is preferred over a linear function for classification
net.layers{2}.transferFcn = 'tansig';

net.divideParam.trainRatio = 0.7;
net.divideParam.valRatio = 1 - net.divideParam.trainRatio;
net.divideParam.testRatio = 0.0;

[net, tr] = train(net, patterns, targets);   % train the networks

%% Test the Network
outputs = net(patterns);
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What is the ratio of positive patterns to negative patterns? –  issamou May 2 '14 at 8:15
I've added a confusion matrix –  Simon H May 3 '14 at 6:38
Well, since some samples of class 0 are correctly classified, tansig must have been returning some negative values, right? Though I am assuming your algorithm rounds -ve values to class 0 and +ve values to class 1. –  issamou May 3 '14 at 19:58

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