Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

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)
share|improve this question
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

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.