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In my clustering problem, not only the points can come and go but also the features can be removed or added. Is there any clustering algorithm for my problem.

Specifically I am looking for an agglomerative hierarchical clustering version of these kind of clustering algorithms.

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You can use hierarchical clustering (except it scales really bad) or any other distance based clustering. Just k-means is a bit tricky because how do you compute the mean when the value is not present?

You only need to define an appropriate distance function first.

Clustering is usually done based on similarity, so: first find out what "similar" means for you. This is very data set and use case specific, although many people can use some kind of distance function. There is no "one size fits all" solution.

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My data are binary data and suppose I use hamming distance. But it does not make the problem simpler – Masood_mj Jul 25 '12 at 19:23

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