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I have written a few clustering algorithms to understand them. They run perfectly fine. But I would like to know how well they work when noise is added. I'm not really sure how to add noise to my data.

Is it enough to take a small perturbation in each item such as

Original: 1, 2.34, 3.2346, 4.234, 5.235, 6.245, 7.45
2, 3.54, 4.2646, 2.24, 4.25, 6.25, 4.5 ....

The new would find the variance of each column and then add that to each element of the column.

Or do I add a new item set which would be away from each cluster? If so how would I do that?

share|improve this question
    
hi, what about gaussian noise? –  sled Oct 30 '11 at 17:46
    
I think that's a good idea. But how should I add the Gaussian noise? –  Ukzui Oct 30 '11 at 17:55
    
what programming language do you use? –  sled Oct 30 '11 at 18:01
    
I can add Gaussian noise in Matlab really fast. So I think I will use that. –  Ukzui Oct 30 '11 at 18:02
1  
Is this The right way to do it? Matrix = Matrix + randn(m,n) ? –  Ukzui Oct 30 '11 at 18:22

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