Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

For data that is known to have seasonal, or daily patterns I'd like to use fourier analysis be used to make predictions. After running fft on time series data, I obtain coefficients. How can I use these coefficients for prediction?

I believe FFT assumes all data it receives constitute one period, then, if I simply regenerate data using ifft, I am also regenerating the continuation of my function, so can I use these values for future values?

Simply put: I run fft for t=0,1,2,..10 then using ifft on coef, can I use regenerated time series for t=11,12,..20 ?

share|improve this question

3 Answers 3

up vote 6 down vote accepted

It sounds like you want a combination of extrapolation and denoising.

You say you want to repeat the observed data over multiple periods. Well, then just repeat the observed data. No need for Fourier analysis.

But you also want to find "patterns". I assume that means finding the dominant frequency components in the observed data. Then yes, take the Fourier transform, preserve the largest coefficients, and eliminate the rest.

X = scipy.fft(x)
Y = scipy.zeros(len(X))
Y[important frequencies] = X[important frequencies]

As for periodic repetition: Let z = [x, x], i.e., two periods of the signal x. Then Z[2k] = X[k] for all k in {0, 1, ..., N-1}, and zeros otherwise.

Z = scipy.zeros(2*len(X))
Z[::2] = X
share|improve this answer
    
So you are repeating most important coefficients in Z (twice in the above example), and if use ifft to regenerate my time series, this new series will be longer than the original and by definition will have predictions in it. –  user423805 Dec 18 '10 at 20:28
1  
I guess by denoising you mean picking the most important coefficients. –  user423805 Dec 18 '10 at 20:30
1  
Z = [X[0], 0, X[1], 0, X[2], 0, ..., X[N-1], 0]. If that's what you mean, then yes. And yes, preserving the most important coefficients will have a "smoothing" or "blurring" or "denoising" effect on the signal. –  Steve Tjoa Dec 18 '10 at 20:46
    
I just realized I can keep calling Y[ctr] * (np.cos(xctr*2*pi/N) + 1jnp.sin(x*ctr*2*pi/N)) where x is new values and Y is coefficients, and ctr is coef indexes, and add this up; this will essentially forecast. What do you think? –  user423805 Dec 18 '10 at 20:58
    
Yes, that is basically isolating a single complex sinusoid in the time domain. But the answer will be complex. You also need the component Y[N-ctr] in order to get a real signal. (x is a real signal iff X has conjugate symmetry, i.e., X[k] = X*[-k].) –  Steve Tjoa Dec 18 '10 at 21:34

When you run an FFT on time series data, you transform it into the frequency domain. The coefficients multiply the terms in the series (sines and cosines or complex exponentials), each with a different frequency.

Extrapolation is always a dangerous thing, but you're welcome to try it. You're using past information to predict the future when you do this: "Predict tomorrow's weather by looking at today." Just be aware of the risks.

I'd recommend reading "Black Swan".

share|improve this answer
1  
I read Black Swan. I am not talking about stock prices necessarily. Let's say .. harvesting data, which is very seasonal, or the famous sunspots data. So I am talking about something predictable. –  user423805 Dec 18 '10 at 18:53
    
Let me clarify little further: Let's say I pinpointed a frequency that is pretty dominant in the data. How do I tie this back to points in the time domain data, so I can jump ahead and in the future and do prediction. –  user423805 Dec 18 '10 at 18:56
2  
+1. Extrapolation is dangerous, yes. Usually, people make models, and assume that the future will behave like the model says. Models depends on parameters, which are estimated with present or past observations. So you don't "predict" anything, you only fit a model. –  Alexandre C. Dec 18 '10 at 18:57
    
@user: this is a very difficult and probably too broad question. –  Alexandre C. Dec 18 '10 at 18:57
2  
@Alexandra C: I am talking about data that is known to repeat itself. –  user423805 Dec 18 '10 at 18:59

I'm aware that this question may be not actual for you anymore, but for others that are looking for answers I wrote a very simple example of fourier extrapolation in Python https://gist.github.com/tartakynov/83f3cd8f44208a1856ce

Before you run the script make sure that you have all dependencies installed (numpy, matplotlib). Feel free to experiment with it. enter image description here P.S. Locally Stationary Wavelet may be better than fourier extrapolation. LSW is commonly used in predicting time series. The main disadvantage of fourier extrapolation is that it just repeats your series with period N, where N - length of your time series.

share|improve this answer
    
So, sorry just making sure I understand. x (blue line) is the observed data? extrapolation (red line) is the prediction? –  jeffery_the_wind Apr 1 at 15:56
    
@jeffery_the_wind Yes, the red line is the prediction and blue is observed data. Obviously there is overfitting in this example, to avoid that you can adjust the number of harmonics in the model. –  tartakynov Apr 1 at 17:05

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.