Performance of Feed Forward Neural Network
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I do not understand how tr.perf(end) is computed, this is also the performance value the nntraintool shows in the pop-up window. Does someone know the analytical formula for it?
In particular, I execute the following example of a ff NN from matlab:
% code
[x,t] = simplefit_dataset;
net = feedforwardnet(10);
[net, tr]= train(net,x,t);
view(net)
y = net(x);
perf1 = perform(net,y,t)
perf2=tr.perf(end)
What is the difference between perf1 and perf 2?
perf1 should be the mse on all data points. I also computed mse on only test, validation and training points but none of them seem to match with perf2...
if true
% code
yPred = net(x(:,tr.testInd));
perf_Test = perform(net,yPred,t(tr.testInd))
clear yPred;
yPred = net(x(:,tr.valInd));
perf_Val = perform(net,yPred,t(tr.valInd))
clear yPred;
yPred = net(x(:,tr.trainInd));
perf_Train = perform(net,yPred,t(tr.trainInd))
end
Did anyone go through this already? Thanks in advance
Antworten (1)
Greg Heath
am 23 Mai 2018
% 1. ALWAYS START CLEAN
close all, clear all, clc
% 2. ALWAYS INITIALIZE THE RNG SO THAT RESULTS CAN BE DUPLICATED !!!
rng(0) % Typical choice
% rng(4151941) % Worse example
% 3. DOCUMENTATION EXAMPLE FROM HELP FEEDFORWARDNET & SPECIAL CASE HELP FITNET (IDENTICAL RESULTS)
[x, t] = simplefit_dataset;
[I N ] = size(x) % [ 1 94 ]
[O N ] = size(t) % [ 1 94 ]
% 4. Reference MSE is that for naive guess answer y = mean(t)
MSEref = mean(var(t',1)) % 8.3378
% 5. ALWAYS PLOT THE TARGET TO COUNT THE NUMBER OF LOCAL MAXES AND MINS.
plot(x,t)
Nmax = 2, Nmin = 2
% 6. CHOOSE H >= 2*max(Nmax,Nmin)
H = 2*max(Nmax,Nmin) % 4
net = fitnet(H);
[net tr y e] = train(net,x,t);
% y = net(x); e = t - y;
NMSE = mse(e)/MSEref % 3.3966e-04
perf1 = mse(e) % 0.0028
trnind = tr.trainInd;
perf2 = mse(e(trnind)) % 0.0033
hold on, plot(x,y,'r')
perf1 = perform(net,y,t) % 0.0028
perf2 = tr.perf(end) % 0.0033
% NOTE
% rng(0): mse(e) = 0.0028/0.0033
%
% rng(4151941): mse(e) = 0.0492/0.0440
Hope this helps.
Thank you for formally accepting my answer
Greg
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