# Time series segmentation

I have arrays of time series, averaging about 1000 values per array. I need to independently identify time series segments in each array.

I couldn't find much information on standards on how to accomplish this. The approach I'm currently using is to calculate the mean of the array and segment items whenever the elapsed time between each item exceeds it. I'm sure there are more appropriate methods.

This is the code that I'm currently using.

``````def time_cluster(input)
input.sort!
differences = (input.size-1).times.to_a.map {|i| input[i+1] - input[i] }
mean = differences.mean

clusters = []
j = 0

input.each_index do |i|
j += 1 if i > 0 and differences[i-1] > mean
(clusters[j] ||= []) << input[i]
end

return clusters
end
``````

A couple samples from this code

``````time_cluster([1, 2, 3, 4, 7, 9, 250, 254, 258, 270, 292, 340, 345, 349, 371, 375, 382, 405, 407, 409, 520, 527])
``````

Outputs

``````1  2  3  4  7  9, sparsity 1.3
250  254  258  270  292,  sparsity 8.4
340  345  349  371  375  382  405  407  409, sparsity 7
520  527, sparsity 3
``````

Another array

``````time_cluster([1, 2, 3, 4 , 5, 6, 7, 8, 9, 10, 1000, 1020, 1040, 1060, 1080, 1200])
``````

Outputs

``````1  2  3  4  5  6  7  8  9  10, sparsity 0.9
1000  1020  1040  1060  1080, sparsity 16
1200
``````
-
So what is your exact question? Did you have a look at the methods from literature, e.g. scholar.google.com/scholar?q=time+series+segmentation –  Anony-Mousse Mar 17 '12 at 10:01
See the replies to this question: stackoverflow.com/questions/8940049/… –  Anony-Mousse Mar 18 '12 at 10:15

Use K-Means. http://ai4r.rubyforge.org/machineLearning.html

``````gem install ai4r
``````

Singular Value Decomposition may also interest you. http://www.igvita.com/2007/01/15/svd-recommendation-system-in-ruby/

If you can't do it in Ruby, here is a great example in Python.

Unsupervised clustering with unknown number of clusters

-
@Anony-Mousse: as far as I understand, he is looking for "more appropriate methods". Distance in 1-d data is `sqrt((x1 - x2)^2) = |x1 - x2|`. As I already told in my previous comment, k-means is just a starting point for playing around with clustering algorithms. It is always possible to take any data mining tool and try out 3-4 clustering methods in a couple of minutes. –  ffriend Mar 17 '12 at 22:17