Am I computing cross entropy incorrectly?
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I am working on a neural network and would like to use cross entropy as my error function. I noticed from a previous question that MATLAB added this functionality starting with R2013b. I decided to test the crossentropy function by running the simple example provided in the documentation. The code is reprinted below for convenience:
[x,t] = iris_dataset;
net = patternnet(10);
net = train(net,x,t);
y = net(x);
perf = crossentropy(net,t,y)
When I run this code, I get perf = 0.0367. To verify this result, I ran the code:
ce = -mean(sum(t.*log(y)+(1-t).*log(1-y)))
which resulted in ce = 0.1100. Why are perf and ce unequal? Do I have an error in my calculation?
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Più risposte (3)
Greg Heath
il 21 Ago 2014
You are using the Xent form for outputs and targets that do not have to sum to 1. The corresponding output transfer function is logsig.
For targets that are constrained to sum to 1, use softmax and the first tern of the sum.
For extensive discussions search in comp.ai.neural-nets using
greg cross entropy
Hope this helps.
Thank you for formally accepting my answer
Greg
2 Commenti
Matthew Eicholtz
il 21 Ago 2014
Modificato: Matthew Eicholtz
il 21 Ago 2014
Greg Heath
il 21 Ago 2014
You are welcome for the reply. It did answer your question.
The next time you check make sure that you initialize the RNG before you train so that you can duplicate your calculation.
Or Shamir
il 23 Set 2017
ce = -t .* log(y);
perf = sum(ce(:))/numel(ce);
1 Commento
Greg Heath
il 26 Set 2017
isn't that the same as
perf = mean(ce(:)); % ?
Tian Li
il 13 Ott 2017
0 voti
ce = -t .* log(y); perf = sum(ce(:))/numel(ce);
This is the right answer for muti-class classification error problem
1 Commento
Greg Heath
il 15 Ott 2017
Why do you think that is different from the last 2 answers???
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