tha meaning of delay in neural net time series
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Hi All,
I want to be sure about the delay in time series meaning For example, when the I write the input delay is 2, and the feedback delay is 3 does that mean its change from 1:2, 1:3? And the other question is can I take the delay in NAREXNET as an intervals? (i.e. 1:2:4)?
Thank you
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Réponse acceptée
Greg Heath
le 18 Déc 2015
Modifié(e) : Greg Heath
le 4 Jan 2016
net = narxnet(ID,FD,H)
ID is a row vector of NONNEGATIVE, INCREASING BUT NOT
NECESSARILY CONSECUTIVE, INTEGERS
FD is a row vector of POSITIVE , INCREASING BUT NOT NECESSARILY
CONSECUTIVE, INTEGERS
ID and FD do not have to have the same length or integers
in common
ID = 2 IS NOT THE SAME AS ID = 1:2 = [ 1 2 ]
ID = [ 1:2:4 ] = [ 1 3 4 ]
If ID = [ 0:2:4 ] and FD = [ 1:3 ], then
y(t+4) = f( x(t+4), x(t+2), x(t), y(t+3, y(t+2), y(t+1) )
Hope this helps,
Thank you for formally accepting my answer
Greg
2 commentaires
Greg Heath
le 4 Jan 2016
It has to be acceptable. It is just the average variance of your target variables.
The important point is that it is the minimum MSE that can be achieved with the NAIVE constant output model, that yields the same constant output regardless of input. (The next best model is a linear model)
With a little thought you can prove that if the output is constant, regardless of input, then the constant that minimizes MSE is just the mean of the target matrix and the minimum MSE is just the average target variance.
Therefore, it is a very appropriate reference for normalization.
Also note that if the target columns are standardized (zero-mean/unit-variance) via zscore or mapstd, then MSE00 = 1.
Hope this helps.
Greg
Plus de réponses (1)
Fatma HM
le 14 Jan 2019
Modifié(e) : Greg Heath
le 14 Jan 2019
Hi All,
I want to know how I can find the size of the real and the size of the estimated in Neural networks when i have input, output and error ??
GREG:
Real and estimated what?
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