I was going through the k-means Wikipedia page. Based on the algorithm, I think the complexity is O(n*k*i) (n = total elements, k = number of cluster iteration)

So can someone explain me this statement from Wikipedia and how is this NP hard?

If k and d (the dimension) are fixed, the problem can be exactly solved in time O(ndk+1 log n), where n is the number of entities to be clustered.


It depends on what you call k-means.

The problem of finding the global optimum of the k-means objective function

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is NP-hard, where Si is the cluster i (and there are k clusters), xj is the d-dimensional point in cluster Si and μi is the centroid (average of the points) of cluster Si.

However, running a fixed number t of iterations of the standard algorithm takes only O(t*k*n*d), for n (d-dimensional) points, where kis the number of centroids (or clusters). This what practical implementations do (often with random restarts between the iterations).

The standard algorithm only approximates a local optimum of the above function, and so do all the k-means algorithms that I've seen.


In this answer, note that i used in the k-means objective formula and i used in the analysis of the time complexity of k-means (that is, the number of iterations needed until convergence) are different.


The problem is NP-Hard because there is another well known NP hard problem that can be reduced to (planar) k-means problem. Have a look at the paper The Planar k-means Problem is NP-hard (by Mahajan et al.) for more info.

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