Use regularization with trainlm - negative performance
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I train my network (2-layers) from the Neural Network toolbox. I train it with the train function trainlm and performance function mse. When I add some regularization through
net.performParam.regularization = 0.6
I get negative performance (for example -0.02). Is it possible to use regularization with trainlm. And how is it possible to get negative performance?
Answers (1)
Greg Heath
on 31 Oct 2018
Edited: Greg Heath
on 31 Oct 2018
0. SEE BELOW AND POST ANY DIFFICULTIES
1. Read the documentation and try the examples
help trainbr
and
doc trainbr
2. Search previous posts using
trainbr
and
greg trainbr
3. More example data is available using
help nndatasets
doc nndatasets
Post any problems and alert me.
Hope this helps.
Thank you for formally accepting my answer
Greg
2 Comments
Daniel Perez Rapela
on 31 Oct 2018
Hello Greg, I have looked the everywhere (MatLab and not MatLab) and still cannot find an answer for this question. How is it possible that when I train my neuron with trainln with regularization the performance turns out negative for some cases? In these cases, best_perf and best_vperf are negative but even more strange is that if I take this already trained neuron and run a perform function with either the training or validation samples, the results are positive and obviously differ from the best_perf and best_vperf. Any thoughts? Thanks, Daniel
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