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I have a list of strings that I use to fit sklearn.cluster.KMeans:

X = TfidfVectorizer().fit_transform(docs)
km = KMeans().fit(X)

Now I would like to get the cluster centers in their original string representation. I know km.cluster_centers_ but could not figure out how to get the relevant indices of docs.

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up vote 5 down vote accepted

There is no "original representation" of the cluster centers in k-means; they are not actually points (vectorized documents) from the input set, but means of multiple points. Such means cannot be transformed back into documents since the bag-of-words representation destroys the order of terms.

One possible approximation is to take a centroid vector, then use TfidfVectorizer.inverse_transform on it to find out which terms have non-zero tf-idf value in it.

You could achieve what you want with the k-medoids algorithm, which does assign actual input points as centroids, but that is not implemented in scikit-learn.

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You could use the Affinity Propagation algorithm, that returns actual data points as cluster centers, also. – cjohnson318 Jul 5 '12 at 13:35
    
@cjohnson318: good point. I've never tried that algorithm on text, though. – Fred Foo Jul 5 '12 at 13:37
    
@larsmans: Thanks for clarifying and the pointer to k-medoids! – mathias Jul 5 '12 at 13:42
1  
@larsmans: I just found out about it, so it's my New Favorite Algorithm to apply to everything. I like it because you don't need to know how many clusters you're looking for, but for this application, specifying the number of clusters a priori might be more appropriate. I'm not sure. – cjohnson318 Jul 5 '12 at 14:35
    
@mathias But since KMeans does return the centroids, you can just calculate the Euclidean distance from each point in your data set to each center and then return the actual data points closest to the centroids. – patrick May 4 at 13:58

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