About parameters for NARX

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Fran Mat
Fran Mat am 18 Feb. 2014
Kommentiert: Greg Heath am 24 Feb. 2014
Hi all:
I have built a NARX with 2 time-series as inputs. I have seen that changing Number of Neurons and Number of Delays, accuracy changes from time to time (sometimes for better, sometimes for worst). Instead of trial & error approach, is there a way to estimate/to start with a good combination of Delays v/s Number of Neurones in order to improve the accuracy of the network?. Thanks for your suggestions.
Best regards.

Akzeptierte Antwort

Greg Heath
Greg Heath am 19 Feb. 2014
FD: Find the significant delays in the autocorrelation function of the target
ID: Find the significant delays in the cross-correlation function of the input and target.
Search for some of my example code
greg nncorr thresh95
Hope this helps.
Thank you for formally accepting my answer
Greg
  2 Kommentare
Fran Mat
Fran Mat am 23 Feb. 2014
Hi Greg: Thanks for this.
which I think is not exactly the topic I am looking for. Remember: I have 5 series as input and 1 as output. Should I get the correlation five times? for 5 inputs versus 1 output?. Please clarify.
Thanks.
Fran.
Greg Heath
Greg Heath am 24 Feb. 2014
Yes. You will get 6 sequences of significant lags; 5 for ID and one for FD. However, you also have the magnitudes of those correlations. So, if your inputs and target are standardized (zero-mean/unit-variance), you can make a reasonable choice of which ones to keep. But remember that the sequence of ID lags you choose will be applied to all of inputs.

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