Neural Networks manipulation in k fold method

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so after using the k-fold method (for validating and testing each subset K times) is there a way to manipulate the k "subnetworks" created? i there a way to make these k networks visible and accesible? Is my question meaningfull? i mean what happenes in k-fold is creating k networks or not?

Accepted Answer

Greg Heath
Greg Heath on 6 May 2013
The simplest solution is
y = mean( net1(x)+net2(x)+...netk(x));
Any effort to combine weights into one net has to take into consideration the different default normalizations. Therefore, all of the data would have to be standardized or normalized a priori using the same mean/stdv or min/max and the default normalization disabled.
Hope this helps
Thank you for formally accepting my answer
Greg

More Answers (1)

laplace laplace
laplace laplace on 6 May 2013
let me re-phrase my question to make it more clear. Can i use each of the k-networks created independently from the others?
  5 Comments
laplace laplace
laplace laplace on 27 Jun 2013
what is the argument "x"
y = mean( net1(x)+net2(x)+...netk(x)); if true

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