I'm making a project connected with identifying dynamic of sales. That's how the piece of my database looks like http://imagizer.imageshack.us/a/img854/1958/zlco.jpg. There are three columns:

Product - present the group of product

Week - time since launch the product (week), first 26 weeks

Sales_gain - how the sales of product change by week

In the database there is 3302 observations = 127 time series

My aim is to cluster time series in groups which are going to show me different dynamic of sales. Before clustering I want to use Fast Fourier Transform to change time series on vectors and take into consideration amplitude etc and then use a distance algorithm and group products.

It's my first time I deal with FFT and clustering, so I would be grateful if anybody would point steps, which I have to do before/after using FFT to group dynamics of sales. I want to do all steps in R, so it would be wonderful if somebody type which procedures should I use to do all steps.

That's how my time series look like now http://imageshack.com/a/img703/6726/sru7.jpg

Please note that I am relatively new to time series analysis (that's why I cannot put here my code) so any clarity you could provide in R or any package you could recommend that would accomplish this task efficiently would be appreciated.

P.S. Instead of FFT I found the code for DWT here -> www.rdatamining.com/examples/time-series-clustering-classification but cannot use it on my data base and time series (suggest R to analyze new time series after 26 weeks). Can sb explain it to me?

cross-correlationto determine which series have similar behavior over time? Also useful could be performing aregression analysisand then clustering based on its parameters. Fourier transform is typically used for (pseudo-)periodic signals but in your case there does not seem to be enough data available (i.e. 26 weeks are too few to capture seasonal events). – Petr Vepřek Mar 29 '14 at 22:27