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I run a clustering algorithm and want to evaluate the result by using silhouette score in scikit-learn. But in the scikit-learn, it needs to calculate the distance matrix: distances = pairwise_distances(X, metric=metric, **kwds)

Due to the fact that my data is order of 300K, and my memory is 2GB, and the result is out of memory. And I can not evaluate the clustering result.

Does anyone know how to overcome this problem or not? Thank you for your help.

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Set the sample_size parameter in the call to silhouette_score to some value smaller than 300K. Using this parameter will sample datapoints from X and calculate the silhouette_score on those instead of the entire array.

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thank you for your reply. I think it would be a good solution. I will try many iterations and then take the mean of the score. – Thien Bao May 8 '13 at 12:04

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