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# Neural network doesn't return values below 0.5 with logsig

I want to classify two classes with a neural network. Since outputs are 0 or 1, I am using (or trying t use) 'logsig' for the output function. My problem is that when I do that, my simulations end up being between 0.5 and 1. As if everything entering the logsig function was positive.

PS: My training set and my testing set are composed of normalized values.

Here is what I do:

``````t = [0.8*ones(1,50) 0.2*ones(1,50)];
%define net
net = newff(trainSet,t,n,{'tansig','logsig'},'trainscg');
net.trainparam.epochs = 100;
net.trainParam.goal = 0;
%train net
net = train(net,trainSet,t);
%test net
%%on testing set
outputs = sim(net,testSet)
``````
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How have you normalised? Especially what do your output variables in your training set look like? – Dan Mar 6 '14 at 6:25
I have changed them so that mean would be 0 and variance 1. Here is a sample: 0.583655523269032 -0.570741924698547 0.445428970212546 -0.480186786378411 0.384208559039074 -0.624453529130333 – CôteViande Mar 6 '14 at 7:40
But `logsig` can only produce outputs between 0 and 1, so surely then you should have normalized (at least your outputs) to be between zero and one instead of trying to standardize them as you have. How can `logsig` possibly produce a result like `-0.624453529130333`? – Dan Mar 6 '14 at 7:45
Only the inputs have been normalized. The output targets are "t = [0.8*ones(1,50) 0.2*ones(1,50)];" My issue is that it doesn't produce results like 0.2 – CôteViande Mar 6 '14 at 7:50
(with 'tansig', it producces them but it's not satisfying since i do not use the advantages of the function (its shape)) – CôteViande Mar 6 '14 at 7:51