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I would like to make prediction on a chaotic time series inside my java application , with some software's I've calculated the time delay d=7, and the embedding dimension m=15 now, I want to make prediction on my time series (the time lag of my time series is 5 seconds) I Do not care about the predictor, but something simple is preferable. my time series looks like= =(34,31,21,23,28,51,16,32,13,61,15,31,35,30,39,26,13,34,36,36,10,26,47,31,51,18,20,12,56,33,13,53,40,30,29,36,17,16,32,28,33,16,23,9,15,24,34,27,32,53,41,22,35,33,28,31,25,17,28,26,37)

how to do this using java language? (I do not know how to implement such algorithm in any language even with algorithm) I mean I did not understand the prediction phase, I'll be grateful if someone would explain it using my time series simples...

Some on has suggest me to use the LIBSVM, which means to use the SVM as a predictor, So how can I make prediction using SVM algorithm from this package? I mean how to set parameters? my embedding dimension will correspond which parameter in SVM? and the time delay too? the examples offered by the package are not so useful to me...

helping to find a solution... regards.

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I think you need to find the algorithm, and then people can help you with the implementation –  Brian Agnew Nov 19 '12 at 14:20
there are many algorithms, but I look for the easiest one, unfortunately I do not which one. –  user1231268 Nov 19 '12 at 14:32
for example I want to use a regression based prediction algorithm –  user1231268 Nov 19 '12 at 16:33
As Brian suggest, you'll get better responses if you post your implementation attempts. This question is also a good candidate for the "Stats SE" (crossvalidated) stats.stackexchange.com –  Ram Narasimhan Nov 19 '12 at 18:43

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