Indices = crossvalind('Kfold',inputs , 10);
for i=1:10
test = (Indices == i);
train = ~test;
net = newff(inputs(:,train),targets(:,train),20,{},'trainscg');
[net,TR] = traingd(net,inputs,targets);
a = sim(net,inputs(:,train));
b=sim(net,inputs(:,test));
end
this is the code to apply crossvalidation feel free to use it:)
but there is a problem in crossvalind when your input set has a higher dimension than 1
in case your input set consists of row vectors then the crossvalind command should be modified as following:
[M, N] = size (inputs)
indices=crossvalind('Kfold',inputs(1:M,N),10);
*
*so now my question is: in case my input set consists of column vectors how should i modify crossvalind to assign indices NOT to each element of every column vector *BUT to each column vector itself***
: in case someone wants to pass indices to the elements of column vectors of the "inputs matrix" he can do:
C = num2cell(inputs,1);
for i=1:length(inputs)
indices=crossvalind('Kfold',C{i},10)
end