Recognize overfitting in retraining
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I wrote the following code, inspired of those proposed in the neural network toolbox manual, to retrain a network
load dati_MRTA.mat% where IN_MRTA=13x49 double and TARGET_MRTA=1x49 double
Q=size(IN_MRTA,2);
Q1=floor(Q*0.9);
Q2=Q-Q1;
ind=randperm(Q);
ind1=ind(1:Q1);
ind2=ind(Q1+(1:Q2));
x1=IN_MRTA(:,ind1);
t1=TARGET_MRTA(:,ind1);
x2=IN_MRTA(:,ind2);
t2=TARGET_MRTA(:,ind2);
net=feedforwardnet(13,'trainlm');
numNN=10;
NN=cell(1,numNN);
tr=cell(1,numNN);
perfs=zeros(3,numNN);
for i=1:numNN
disp(['Training ' num2str(i) '/' num2str(numNN)])
[NN{i},tr{i}]=train(net,x1,t1);
y2=NN{i}(x2);
perfs(1,i)=sqrt(tr{i}.best_perf);
perfs(2,i)=sqrt(tr{i}.best_vperf);
perfs(3,i)=sqrt(mse(net,t2,y2));
end
best results I've obtained during the same iteration are RMSEtraining=4.8730 RMSEvalidation=7.8195 RMSEtest=10.3158, the corresponding performanec plot is the following:

it does reprents a good result or it is and indication of possible overfitting?
1 Kommentar
Greg Heath
am 26 Sep. 2015
Either post your data or choose an example from MATLAB's NN examples.
help nndatasets
and
doc nndatasets
Hope this helps.
Greg
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