Azzera filtri
Azzera filtri

NN toolbox, Timedelay.net : removedelay?

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Edo
Edo il 12 Ott 2012
Commentato: WT il 15 Dic 2014
Dear all,
I have an issue with the time-series prediction neural networks: I have a set of inputs, and I want to predict a related output at time (t+2). (I also have the data of my y up to time t, that's why I was using Narxnet, but apparently, probably for some errors in my network, it looks like it is taking into account only y(t) almost ignoring all the other inputs x(t) which I know for sure they would help improving the performance..so now I turned to timedelay so that it can't use the previous y).
I don't understand how the early prediction part works (with the command removedelay): do i get the same result fixing inputDelays = 1:d; ? I did some trials using y as my input, and apparently, I can guess that if: inputDelays = 0:d; then it is predicting y(t), having x(t)..x(t-d), in fact I got a pefect prediction with R=1, because i tried it y(t)as my input too(so it was actually doing y(t)=y(t)..y(t-d))
if: inputDelays = 1:d; so then I have my prediction one step ahead. I can notice it as the chart looks a bit shifted of one time step and R goes down to 0.8. So what's the point of the early prediction? Isn't it doing exactly the same thing of this?
To sum up, if I want my prediction 2 time steps ahead, can I simply use inputDelays = 2:d; ?
Thanks everybody for the support.
  1 Commento
WT
WT il 15 Dic 2014
Hi Edo,
May i know whether you have managed to obtain the predicted output for (t+2) cause i am still unable to predict the future outputs..I would appreciate if you could help me on this.
Thank you

Accedi per commentare.

Risposta accettata

Greg Heath
Greg Heath il 15 Dic 2014
If dmin > = 0 then
net = timedelaynet( dmin:dmax)
assumes
y(t) = f(x(t-dmin),...,x(t-dmax))
or equivalently
y(t+dmin) = f(x(t),...,x(t-(dmax-dmin))
if dmin >= n >= 0
netr = removedelay(net,n);
causes
y(t) = f(x(t-(dmin-n)),...,x(t-(dmax-n)))
NOTE: Although
dmin >= 0 (NONNEGATIVE) for input delays
for feedback delays,
dmin > 0 % POSITIVE!
Hope this helps.
Thank you for formally accepting my answer
Greg

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