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. I used k-medoids algorithm (after transforming data with FFT/DWT) and I do not know how to present each cluster = grouped time series on different plots.

Can somebody tell me how should I do that?

Here is the code of clustering:

```
clustersalesGain = pam(t(salesGain), 8)
nazwy = as.character(nazwy)
cbind(nazwy,clustersalesGain$clustering)
```

I would like to present the output on different plots.

col=of lines.ts function is to control the color of the time series. – opensrc Mar 30 at 23:47`tsdat <- ts(rt(200 * 8, df = 3), start = c(1961, 1), frequency = 12) plot(tsdat, col='red')`

HTH – opensrc Mar 31 at 0:04