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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)

I would like to present the output on different plots.

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how about give each cluster a different color or line style, then plot them in one single chart? –  opensrc Mar 30 at 23:01
that's my problem, cause I dont know how to define different color for each cluster. Can you help me with the procedure? Sorry for my incompetence, but it's my first time I deal with clustering in R. –  user3463225 Mar 30 at 23:33
the parameter col= of lines.ts function is to control the color of the time series. –  opensrc Mar 30 at 23:47
I am sorry, but still I dont know how to implement it. Cause after using 'cbind(nazwy,clustersalesGain$clustering)' i get the results: nazwy [1,] "Akcesoria_dla_zwierząt" "1" [2,] "Balsam" "1" [3,] "Baton_zbożowy" "2" [4,] "Bekon" "1" etc. How should I define - plot cluster 1 on the plot with red color? Can you give me an example? –  user3463225 Mar 30 at 23:54
tsdat <- ts(rt(200 * 8, df = 3), start = c(1961, 1), frequency = 12) plot(tsdat, col='red') HTH –  opensrc Mar 31 at 0:04

1 Answer 1

k-medoids returns actual data points as cluster centers.

Just visualize them the same way you visualize your data!

(And if you havn't been visualizing your data, you better work on that now.)

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