k-means++: the advantages of careful seeding
David Arthur(Stanford University), Sergei Vassilvitskii(Stanford University)
Cited by 6,299
Abstract
The k-means method is a widely used clustering technique that seeks to minimize the average squared distance between points in the same cluster. Although it offers no accuracy guarantees, its simplicity and speed are very appealing in practice. By augmenting k-means with a simple, randomized seeding technique, we obtain an algorithm that is O(log k)-competitive with the optimal clustering. Experiments show our augmentation improves both the speed and the accuracy of k-means, often quite dramatically. 1
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