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 Comments

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
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
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
The maximum lag from both ID and FD.
I got them from your answers I'm really thank you so much

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 Accepted Answer

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 Comments

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

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Asked:

on 8 Dec 2015

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on 4 Jan 2016

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