I have the following neural network which uses RPOP - Resilent back propagation
NetCore = new BasicNetwork(); NetCore.AddLayer(new BasicLayer(null, false, 32)); NetCore.AddLayer(new BasicLayer(new ActivationTANH(), true, 65)); NetCore.AddLayer(new BasicLayer(new ActivationTANH(), true, 65)); NetCore.AddLayer(new BasicLayer(new ActivationSigmoid(), false, 1)); NetCore.Structure.FinalizeStructure(); NetCore.Reset();
(I've posted the code just to be sure that i am doing right, if no someone would point out, i hope)
After training the network, the error rate is minimized to around 1%, i pass the test data and most of the time the output is produced something like this "5,07080020755566E-10" where i expect numbers from 0 to 1 and also it should be noted that when such cases occur they are always positive number(haven't encountered negative outputs yet).
The second question, which i wanted to ask, is as follows : the neural network is meant to predict soccer matches, so considering that i have 32 inputs. 16 inputs are for team 1 performance data and the 16 are for team 2.
The training sets are prepared like so: say we have 1000 matches and all of those training sets' output is 1.
So during the preparation of the training sets reversed matches are added additonaly, where the output is 0 and of course team 1 and team 2 inputs are changed respectively.
and when testing i get the following results for the same match
Output 0,0125940938512236 Desired 1 direct Output 0,0386960820583483 Desired 0 reversed
The question is why? :)
I will appreciate any help. Spreading a light to this issue would point me the direction where should i dig. Thanks in advance.