Neural Networks manipulation in k fold method

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?

 Akzeptierte Antwort

Greg Heath
Greg Heath am 6 Mai 2013

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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

Weitere Antworten (1)

laplace laplace
laplace laplace am 6 Mai 2013

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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 Kommentare

Greg Heath
Greg Heath am 6 Mai 2013
Yes. Test on all of the data and choose the best.
is there a command to do so?
Greg Heath
Greg Heath am 14 Mai 2013
No special command. Just treat it as as if you only trained one net.
what is the argument "x"
y = mean( net1(x)+net2(x)+...netk(x)); if true
Greg Heath
Greg Heath am 19 Dez. 2018
All of the input data
Greg

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