How can I get MSE and normalized MSE both as performance function when fitting Feed forward neural network?

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Im fitting a feedforward neural network with 8 input parameters and 1 output parameter.i want to use MSE and normalized MSE both to measure the performance.

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Greg Heath
Greg Heath am 26 Okt. 2018
Divide MSE by the mean variance of the target rows (MSE of the constant output model)
MSEref = mean(var(target',1))
NMSE = mse(target-output)/MSEref
Rsquare = 1 - NMSE
Hope this helps.
Thank you for formally accepting my answer
Greg
  2 Kommentare
Avanthi Saumyamala
Avanthi Saumyamala am 29 Okt. 2018
Thank you very much Greg
I saw from one of your answer MSEref computed as follows.
The average biased (e.g., divide by N) target variance is
MSE00 = mean(var(t'),1)
Is this the same or what is the correct answer?
Thank you
Avanthi

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