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I am using scikit-learn and experimenting Kmeans. Its fast but requires number of clusters as an argument. What i would like to try is to automatically computer number of clusters for based on population of documents.

hash-based near-neighbor algorithms (ssdeep) i used before can get similarity clusters based on distance , how can i get cluster size automatically for k means .

KMeans(init='k-means++', n_clusters=cluster_count, n_init=10),
          name="k-means++", data=data)

I want to calculate that cluster_count automatically , is that possible? my test dataset is collection of random files from 20_newsgroup , not pre-categorize into folder , single folder , so no labels.

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You can try various values of k, then pick the best clustering by some evaluation metric (see sklearn.metrics). –  larsmans Dec 3 '12 at 13:23
from the clustering document , i guess 4.3.3. Affinity propagation is what i looking for, but wont be fast like Kmeans right? Do k-means support something like guessing number of clusters in affinity propagation? –  V3ss0n Dec 3 '12 at 14:12
i tested Affinity Propagation on selected docs of 20_newsgroups dataset (it have 19095 documents) and it eats up all RAM (6 GB out of 8 GB , and 5GB of swap) . So i guess it is useless for big dataset. What do you recommend? DBSCAN ? –  V3ss0n Dec 3 '12 at 14:49
DBSCAN might work, though it doesn't scale very well to large numbers of samples because of its O(n²) complexity. (It could have been O(n lg n) with a smarter algorithm, but we never implemented that.) –  larsmans Dec 3 '12 at 14:55
i c, is there any plan to implement O(n log n) version? –  V3ss0n Dec 3 '12 at 19:19

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