Determining the Time series prediction

Hi all, according to simpleseries_dataset code in neural network there is a difference between it and NAREXNET. Is it in the coding or in the implementation of the function itself?

6 commentaires

I don't follow. Comparing
help simpleseries_dataset
with
help narxnet
All I see is
the use of PLOTRESPONSE instead PERF.
Please explain your comment in more detail.
Greg
Lilya
Lilya le 9 Déc 2015
sorry for that. I trained the network with NARXNET the perf. doesn't close to 0 but the regression is almost close to the actual line. The attached file shows what I mean.
Thank you Dr. For all your help.
I don't agree.
The high correlation between input and error is indicative of a poor fit.
This would become more evident if you posted
plotperform
and
plotregression
Hope this helps,
Greg
Lilya
Lilya le 13 Déc 2015
Dr. heath, How can I determine the number of the forecast horizon in the NN code? Its depend on the ID or FD?
Thank you
Greg Heath
Greg Heath le 16 Déc 2015
The maximum lag from both ID and FD.
Lilya
Lilya le 16 Déc 2015
I got them from your answers I'm really thank you so much

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 Réponse acceptée

Greg Heath
Greg Heath le 13 Déc 2015
GOOD QUESTION!
My answer is TRIAL and ERROR
The advice I usually give for starting the process is
1) Use divideblock datadivision.
2) First use the default 0.7/0.15/0.15
3) Use the training data to estimate the
a. significant target autocorrelation lags
b. significant input-target crosscorrelation lags
4) Use 2, 3 and corresponding plots for lags 0 to
Ntrn/2 to guide a choice for ID and FD.
5) Determine the minimum number of hidden nodes for a
specified (degree-of-freedom adjusted) training error rate
e.g., NMSEtrna < 0.005 )
6) If successful try decreasing Ntrn
7) Using the smallest acceptable Ntrn for the openloop configuration, close the loop
and investigate the closeloop configuration.
Hope this helps.
Greg

2 commentaires

Lilya
Lilya le 13 Déc 2015
Excuse me Dr I have another question Is it important to shuffling Inputs?
The final plot and performance are different when I shuffle data
Greg Heath
Greg Heath le 4 Jan 2016
Recommendation #1 for TIMESERIES DATA is to use DIVIDEBLOCK in order TO NOT SHUFFLE THE DATA!

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