# Clustering algorithm where a document can be in more than one cluster

I'm looking for a clustering algorithm that allows each document to belong to more than one cluster (eg. to at least Kclusters).

All the cluster algorithms I studied create a partition of the dataset, which means that every document will be in only one cluster.

Any ideas?

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Is it supervised or not supervised learning you are after? (Do you have a train set with a known classification?) –  amit Feb 6 '13 at 9:28
@amit Unsupervised. I'm talking about clustering, not classification. –  Oscar Mederos Feb 6 '13 at 9:34

## 5 Answers

Use a soft, probabilistic clustering algorithm like a Gaussian Mixture Model. This will then give you a probability of each instance belonging to all possible clusters: just pick the top-N, or any above a certain probability threshold, or some other scheme to allow multiple membership.

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Look for fuzzy, soft, hierarchical and subspace clustering algorithms.

All of these usually allow objects to be assigned to multiple clusters.

For example OPTICS, right now one of my favorite algorithms, has nested clusters.

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I think you are looking for some kind of soft clustering algorithm such as fuzzy k-means, or mixture of Gaussian. Or you may be interested to use some kind of Topic Model such as Latent Dirichlet Allocation or Probabilistic latent semantic analysis.

There is also some Sparse Coding approaches.

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Nominate, that this partition should be distributed to these cluster nodes.

Make an ordering of the cluster nodes, and create a function which (statically) distributes the partitions to multiple nodes. E.g. you have n nodes, and f(x) is a single function that tells that data x should be stored on cluster node f(x). Then [ f(x), (f(x)+1) % n, (f(x)+2) % n ] will give you 3 consecutive nodes to distribute.

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The Wikipedia article on Clique Percolation may be of interest. It allows for the overlapping of similar communities.

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